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This post is to introduce the FairPay framework and its larger context in The Relationship Economy to those involved with Web Monetization, Web Payments, Interledger, Coil, Grant for the Web, and related efforts to bring monetization directly into open Web standards. It positions FairPay as an architectural framework for important higher-level functions that can leverage the lower-level foundation of these standards and infrastructure that do not track user identity or even sessions.
The FairPay framework provides a perspective on why and how provision for a higher-level of relationship-based features will be important to achieving the full potential of Web Monetization and payments. That perspective suggests that the ability to layer on a persistent identity (even if only an opaque identity) is needed to enable Web Monetization use cases to extend beyond a narrow niche.
PART 1 of this post provides an introduction to FairPay that is relevant to anyone
interested in business and revenue models for the digital era.
FairPay creates a new, holistic framework
for economic relationships in the digital world that bridges many worlds,
including for-profit, non-profit, and the Creator/Passion Economy, and many
perspectives, including transactions, micropayments, subscriptions,
memberships, and tipping/donation models. FairPay was first conceived as a
specific and radically new strategy for monetizing digital services in a way
that is not only effective and efficient,
but also fair and win-win. It has grown into a multi-dimensional framework
that bridges most forms of human economic relationships through a holistic
understanding of value.
That led me to being introduced to the
Web Monetization, Interledger, Grant for the Web and Coil community -- and
seeing the time may be ripe for a fruitful bridging of silos. This became
apparent after a series of conversations with two Mozilla Fellows looking at
the broader context of those new initiatives (Matt Mankins and Amber Case), and
with an advisor to Coil and the Grant for the Web (Desigan Chinniah). (Some good background is in the W3C interview of Stefan by Ian Jacobs.) Much
of the messaging of these initiatives refers (implicitly or explicitly) to
"micropayments," a fundamental but fraught concept. Here are my
suggestions for building on and broadening that vision to realize the potential
of this important development more fully.
This
is a discussion draft, intended to open dialog on these broader considerations
and how to address them.
When an earlier draft was nearly
complete, Stephanie Rieger posted a very complementary analysis, Three
futures, Exploring the future of web monetization. She provides an
excellent tutorial on Web Monetization, three future scenarios on how it might
be extended to support a variety of specific monetization models that have
likely appeal to potential Web Monetization users, and specific thoughts and
recommendations. We both seem to be very aligned in suggesting that while
absolute privacy might be ideal in some respects and some use cases, “What’s
not yet clear, is whether this binary approach to privacy will serve their
users as well as they believe” (as she put it).
She provides a section suggesting a structure for “layered privacy” that
provides for controlled reductions in privacy in order to gain functional
benefits.
Stephanie’s section on “three glimpses of
the future” outlines possible futures that translate various business models
and examples of current businesses into a Web Monetization context, leading to
her recommendations. My presentation here of the FairPay framework steps back
to undertake a more fundamental rethinking of our logic for value exchange --
how effective value exchange depends on relationships and the nuanced nature of
value and outcomes, and how a new logic for those relationships can enable far
more win-win exchanges.
The FairPay framework suggests that a
selective and controlled relaxing privacy constraints -- in business contexts
in which a necessary level of trust and cooperation can be established -- can
not only enable added function, but can enable a far more win-win level of
value co-creation, to the benefit of all involved parties. Some brief updates
tieing to Stephanie’s article have been added below. (A deeper synthesis is
left as future work.)
The
logics for value exchange
The greatest danger in times of turbulence is not the turbulence,
it is to
act with yesterday’s logic. (--Peter Drucker)
Web Monetization seeks a new logic that
allows any Web service to be monetized directly from its users, without
significant friction or dependence on intermediaries who may extract unfair
costs (in both money and privacy). It does that by enabling direct streams of
"small payments" within the browsing process, without revealing the
identity of the paying user. My concern is not with this as a low-level service
to build on, but that the protocols should be designed to allow for
higher-level services that provide richer functionality.
FairPay offers a new logic for monetizing
services particularly suited to the world of digital content and other digital
services. It also illuminates new perspectives on the familiar older logics
that we commonly fail to see. As I understand it, Web Monetization currently
assumes that monetization can be divorced from relationships, and limits awareness
of relationships to maintain high levels of privacy. But the FairPay
perspective suggests that there is only a limited class of use cases in which
monetization can be effective, efficient, and fair without consideration of
relationship -- and that often requires some relaxation of privacy constraints,
at least among some actors.
You may already know most of the facts I
will cover here, but FairPay assembles those facts to provide a new
perspective. The first time we ever try to drive a car, we learn that we cannot
steer effectively by looking just a few feet ahead. To steer in a way that will
get us where we want to go, we must look down the road. To drive well, we must
be glancing in many directions. We need to understand and make predictions
about many aspects of our environment. Monetization
is based on predictions of value that occur in a similarly rich and highly
context-dependent environment. FairPay offers a framework for understanding
value in its full richness and context dependency. Even if you do not buy in to
all the ideas I present, the hope is you will find new insights and a deeper
understanding.
Key ideas for the Web Monetization community
●
Some
form of persistent identity is essential to many of the most fair and efficient
models for value exchange, including not only subscriptions and memberships
(whether flat-rate or value/usage-based), but advanced forms of voluntary or
incentivized donation/tipping/patronship/PWYW (pay what you want) models.
●
A
simple protocol for building on top of Web Monetization might provide that a
publisher could ask as part of its initiation of an access request a “Do I know
you?" Replies could be (1) "Yes, here is the reference to our
relationship agreement." (2) "No, I wish to remain anonymous.” or (3)
"No, but let’s negotiate a relationship agreement."
●
Those
who opt in could negotiate what data is tracked, for how long, and with what
constraints on use by that publisher, and on any allowable sharing with others.
They could also negotiate what level of personal identification is enabled (in a layered structure such as Rieger suggests and with possible
opaqueness of identity). Such agreements could be with individual publishers, or
with an aggregator/bundler (with terms that could vary for defined publishers).
●
This could
empower users and publishers to maximize privacy and independence from one
another, and from any third parties, while affording the option to relax those
constraints to negotiated levels that may offer better pricing as well as other
more win-win relationship features and perks.
●
Such
protocols could also allow for an “infomediary” with a fiduciary duty to serve
the user as their agent, and to reveal only summary or limited data to
publishers under defined conditions. Such infomediaries might also be delegated
authority to conduct negotiations on behalf of the user, thus reducing the
cognitive load that such nuance might otherwise place on the user.
●
Consider
adding support in the low-level Web Monetization protocol for features such as
instant refunds (full and/or partial) that can enable greater user control to
improve pricing fairness, even without any identification.
●
Consider
how Web Monetization and services built upon it relate to parallel issues of
identity and relationship in Web advertising, such as in the Requirements for a
Healthy Ecosystem in Advertising (RHEA) proposal.
●
Consider
to what extent The Elements of
FairPay can be
supported, individually and in key combinations, at the protocol level,
independent of any software platform.
●
Consider
whether many of the above capabilities can be enabled by an “enhanced” WM
provider (EWMP) offering separate “relationship” monetization services that
depart from the strict WM requirement to not track site identity, and to act in
part as an infomediary user agent in doing so.
These are
addressed in PART 2, after laying the foundations of this new logic in PART 1.
PART 1 – FairPay concepts
-- economic exchange in the digital era
A
thought experiment about value -- Reisman's Demon
Imagine a supernatural demon that might
power a system of commerce. This demon has a "god's-eye" view, a
perfect ability to observe activity and read the minds of buyers and sellers to
determine individualized "value-in-use:"
●
The demon knows how each buyer
uses a product or service, how much they like it, what value it provides them,
and how that relates to their larger objectives and willingness/ability to pay.
It understands that the value of a given item or unit of service depends on
when and how it is experienced. It is also aware of broader/external/social
value impacts.
●
This demon can determine the economic value surplus of the
offering -- how much value it generates beyond the cost to produce and deliver
it.
●
The demon can go even farther, to
arbitrate how the economic value surplus
can be shared fairly between the producer and the customer. How much of the
surplus should go to the customer, as a value gain over the price paid, and how
much should go the producer, as a profit over the cost of production and delivery,
to sustain their ability to continue those activities.
Even if we lack such a demon, we can
internalize it as an ideal, and design relationships and pricing methods that
seek to approximate what it knows. This demon would apply all of the elements
described below. Advanced forms of
FairPay apply all or most of them. Keep this demon and its sense of value and
fairness in mind as you think about which elements of FairPay you might apply
now, and which you might add in over time.
What?
Yield my privacy?
Obviously, the demon’s “god’s eye” view
sees through any cloak of privacy. Thus the challenge in applying the insights
of the demon will depend on which actors can see through which privacy
constraints to what extent. As noted below, this can depend on which actors are
trusted for what purpose, and one approach to facilitating that with maximum
privacy is to interpose trusted intermediaries that are legally obliged to act
as fiduciaries on the user’s behalf to safeguard their data. Otherwise, if
users demand absolute privacy, that has a cost. If you are a privacy
absolutist, this may seem a major turnoff, but if you think through the
economics outlined here, you may see why there might be a case to seek a more
balanced solution -- to get both a level of privacy and the benefits of the
Relationship Economy.
Note also that in many contexts we have
not just a single buyer (WM “user”) and seller (WM “publisher”), but
intermediaries in a value chain,
including and potentially aggregators/bundlers (including the special role of
WM “providers”). My demon would be able to arbitrate a sharing of the value
surplus all the way down the chain (to the extent that privacy constraints do
not preclude that).
Digital
changes everything
The digital era brings two interacting sea-changes
to value exchange. They have been increasingly understood separately, but how
they combine has been largely ignored. The failure to consider that is why we
have been frantically automating our old logic, making it more efficient at faulty economics, and wondering why things are
getting worse. My demon sheds light on how they fit together, and how we can do
much better.
- The Invisible Hand fails
for digital services. We are steeped in the
pricing model of classical economics: the
market uses prices to ration scarce supply against demand. But the invisible hand flails at digital
services because there is no scarcity of supply. Suppliers have turned
to "artificial scarcity" to maintain prices (using paywalls and
Digital Rights Management) but users rebel at that as an obvious artifice
that seems hostile. "Information wants to be free." FairPay
shows how the solution to this new problem is tied to the other change.
- Commerce has been moving
from one-shot games of transactions to repeated games of loyalty and
cooperation, to put it in game-theory terms,
Traditional mass-marketing has centered on one-time transactions targeted
to an endless universe of consumers -- lose one, find another. But we are
increasingly turning to the superior economics of repeat business and
"loyalty loops," especially with the emergence of "The
Subscription Economy," "The Membership Economy," and the
“Creator” or “Passion” Economy. I
call this "The Relationship Economy" because even in the age of
"1:1 marketing" and "mass-customization" we have
barely begun to realize how improvements in computer-mediated
relationships will empower mass-customized, 1-1 value propositions.
These two come together in FairPay,
because we need a new social contract to sustain creation of value. The only
way to justify a fair price to creators of digital value is to understand that
we are not paying for current value, but
to sustain the continuing creation of future value.
●
The only way to sustain a one-shot
game for valuing an item of digital service is artificial. That makes it a
zero-sum game in which the price will be based on pricing power, not win-win
cooperation on co-creating value.
●
By shifting to a repeating game of
relationship, we can create an "Invisible Handshake," a win-win
process for seeking to find a fair price for each customer that can sustain and
incent ongoing creation of the services they want to have available in the
future.
FairPay provides methods for adaptively
seeking actual fair values in a win-win way -- for each consumer at each stage
of this repeated game. That suggests ways to blend the best features of
micropayments, subscriptions, memberships, and tipping/donation models to suit
each business-customer context. Lack of support for ongoing relationships, at
least at higher levels, would limit the use of Web Monetization and payments
protocols as a base for such options.
FairPay is a user-centered strategy framework
and architecture, not a product
FairPay is not
a product, platform, or protocol. It is a framework and architecture that can
be embodied in products, SaaS services/platforms, and/or protocols. My blog has
extensive background (tabs list key items from the blog and other publications (including a book,
Harvard Business Review and two scholarly journals, Inc., and Techonomy) and conferences. The concepts of FairPay have been evolving since 2010 in
discussions with hundreds of businesses (and non-profits) of all sizes, in a
range of digital content and service businesses to much praise but are still
not widely understood. FairPay combines a set of well-proven elements, drawing
on recent development in marketing theory, behavioral economics, and game
theory. The most advanced combinations still need testing to prove and refine,
but the foundational elements that have already been proven offer clear
lessons applicable to most conventional commerce.
Many view
economic exchange through a political lens. Many businesspeople have
hard-headed zero-sum attitudes, but many are more enlightened about win-win
consumer and social value. Many consumers, creators, and technologists have an
anti-business perspective. FairPay seeks to find a balance that is fair and
win-win for all (as my demon would see it). My prime motivation in developing
FairPay has been to transcend
the apparent conflict between market
capitalism and social values. FairPay seeks a logic for economics in the
digital era that harnesses the genius of markets in a way that moves beyond the
invisible hand to the invisible handshake that can restore human values to
economics. I hope you will see that shine through whatever perspective you
start from. I think this change in perspective can change the world in a way
that all parties can embrace.
My mission is
to evangelize the concepts, and to advise those who seek to implement and test
advanced forms of FairPay as I can. (More background on how I came to this is
in the endnote below.)
Micropayments,
subscriptions, and pricing risk
The consumer risk is very different for
micropayments versus subscriptions. Stefan Thomas' 2018 article notes the issue of
both models being built as closed systems, and other Coil and Web Monetization
documents refer to issues of friction
and privacy, but I suggest it is the issue of
consumer pricing risk that is paramount to user acceptance of these models.
Starting with micropayment pricing risk, many are familiar
with Clay Shirky's 2000 classic "The Case Against Micropayments." (Not so
many know Andrew Odlyzko's more scholarly paper with the
same title, based on his work on telecommunication economics, where
micropayments have a century-old history, such as for minutes of long distance
usage.) Key issues are:
●
Most pressing is the problem of
"the ticking clock," the constantly incrementing meter, which brings
the risk of "bill shock" when micropayments
add up to macropayments. That has
long been known (as has the resulting consumer preference and higher
willingness to pay for flat rate plans, even though they cost the typical
consumer more). This problem can be somewhat reduced by providing for volume
discounts and for price caps and other variabilities, but simple micropayment
models rarely allow for that at all, or do it with just a few usage tiers (as
for mobile phone minutes or data gigabytes). But volume discounts and caps
require tracking usage over a billing period, and that requires a persistent
identity.
●
There are also problems of paying
for items that were not satisfactory -- and of scanning many items lightly but
having to pay full price for all of them. Some services enable ways to adjust
for that, but again, that may require an identity.
Those risks to the user can be countered
by aggregators that offer consumers flat rate plans (like Netflix, Spotify, and
Coil). These might be considered hybrids that charge consumers on a
subscription basis but pay their suppliers on a micropayment basis. That shifts
consumer pricing risk to the issues with subscriptions (next). It also shifts
an unfair level of pricing risk to the suppliers. Instead of set unit rates per
item, the suppliers get some share of the flat rate, so heavy users generate
rapidly declining unit rates of payment that quickly diminish to zero. The
whales who should be generating the most revenue instead get an unsustainably
high discount. Aggregators struggle, and creators struggle even more.
(Keep in mind that the “micro” part of
micropayments can occur at the actual payment level, or just at a metering
level. Most traditionally micropayment pricing models are not actually paid as
individual micropayments, but metered and then totalled into the monthly bill.
That reduces friction and transaction costs, but leaves the risks.)
Subscriptions involve a rather different
set of pricing risks to the user:
●
Most B2C subscriptions are
flat-rate, all-you-can-eat (AYCE) plans. That eliminates micropayment usage-based
"bill shock," but brings the new risk of not using enough in any
given period to justify the price. It also continues the risk of not being
happy with what you used.
●
As subscription models
proliferate, the new problem of "subscription hell" has become a major
issue. If every provider of video or news or magazine content demands $5 or
$10/month (even if you may only want one item per month), you need to spend a
fortune to have access to all the content you want. That leads to the wasteful
pattern of subscribe-binge-cancel.
●
Bundling of services, as with
cable TV channel bundles offered by aggregators, can provide a level of
discounting across multiple suppliers, but then consumers face the problem of
"bundle hell." How do I choose in advance among all these bundles?
How do I know if I will want to watch HBO or Showtime or Cinemax or any bundle
of premium channels in any given month?
No wonder so many consumers, publishers,
and creators are frustrated and angry. That is why we need to step back,
reexamine where we are, and look for a new logic.
Keep in mind these fundamental questions
of pricing risk:
●
Who takes the pricing risk? Buyer or seller or both? Remember that both
value and risk are a function of the price, the experience or outcome of an
exchange, and the time the price is set.
●
That breaks down into two
questions: who decides the price, and when do they decide it? Only when
the answers are right will the value exchange be efficient and fair.
The Relationship Economy
Businesses of all kinds have come to
understand that, in general, it is far more profitable to make repeat sales to
existing customers than to acquire new ones. Marketers design customer journeys
to build "loyalty loops." In basic forms this may not require
awareness of customer identity, but knowing your customer enables creation of a
much more powerful loyalty loop. Two-way dialog with your customer adds even
more to that.
Relationships are even more central to
the subscription and membership models that are increasingly dominating
commerce. Such businesses are very focused on Customer Lifetime Value, to
offset the fact that customer acquisition costs are high and churn is costly.
Currently, much of this focus on
relationships is one-way. They want to know how to target you and sell you on
their formulation of a value proposition. But the most enlightened businesses
want to not just talk at you but listen to you. Computer-mediated
communications are making it increasingly easy and essential to build real customer
relationships that seek to understand and center on value as perceived by each
customer.
(For much more on this theme, see The Relationship Economy -- It's All About Valuing
Customer Experiences.)
The
history of the price tag
We tend to forget that the price tag was
only invented in the mid-1800s. We just assume that sellers set a price and
customers take it or leave it. It has mostly been that way through our entire
lifetimes.
●
But for most of human history,
prices in village markets were customized. Prices (in money or barter) emerged
from individual negotiations in personal contexts, depending on needs,
bargaining powers, and relationships. They generally reflected win-win
"communal norms" including caring, fairness, and even generosity.
●
The price tag was invented by John
Wanamaker and others when they first built large department stores (see this amusing
video). Sellers became institutional, targeting a mass market of
"consumers." They had to be scalable and efficient, and thus to limit
the discretion of sales clerks. That changed everything: the “take it or leave
it” offer led many to leave it -- leading to bargain-hunting and feelings of
exploitation and alienation that have become endemic and still worsening.
Now we are in an age of
mass-customization and 1:1 marketing -- why not for price? The question is how
to do it fairly, effectively, and efficiently at scale.
Value-based
pricing
Business students learn that there are
three basic ways to set price: cost-based, competition-based, or value-based.
It is now widely accepted that the best way is to be value-based. That is what
my value demon seeks to do.
The challenge is that being value-based
is complex. Being usage-based is a start. Units of usage may be items, minutes,
miles, etc. and more units usually correlates to more value. But not always,
and usually not in a linear way. Value is a function of many dimensions, each
possibly involving different units of usage -- and still there is much more to
value.
Beyond usage, outcomes or performance are
increasingly recognized as a truer measure of value. Increasingly, businesses
are realizing that they are not selling products or items, they are selling
desired outcomes, often in the form of an experience. One of the best business
books of 2020 is The Ends Game (coauthored by
Marco Bertini, the marketing scholar who was my coauthor on an HBR article and a journal article on FairPay).
Truly value/outcomes-based pricing is
still limited in consumer markets, but it is increasingly considered best
practice in B2B markets. This is especially true for big-ticket items like
industrial machinery, because determining value is complex and costly. It is
still a challenge to do it well at scale for small transactions. But
subscription services company Zuora has shown that even basic usage-based
pricing can be powerful as an element of
a total strategy. Their tracking of data on over 900 companies that they serve found that the fastest growth was with some
non-zero level of usage based pricing, but less than 50% usage-based.
But usage-based pricing takes us back to
the per minute or per gigabyte micropayment models that "consumers
hate" as Shirky said. FairPay suggests a smarter way that consumers may
come to love. But, before we get to that, how does the new challenge of digital
change things?
Digital
changes everything about pricing and customer relationships
We all know the classic dilemma of
digital pricing:
●
"Information wants to be free" because it can be infinitely
replicated at essentially zero cost. It is a world of abundance. Consumers have
become used to free, and freemium, and ask “why should we pay anything at all?”
But...
●
"Information also wants to be expensive" because it often has
very high value and is usually costly to create. Creators need to earn a living
and invest in creating more information.
To resolve this dilemma, we must re-think
the core assumptions of our value exchange process to find a new logic. We are
no longer allocating scarce resources with the invisible hand, but we need to
sustain creation of future services. How can we do that in a way that balances
value, ability to pay, cost, and a fair profit that creators need to live on?
Hint: most
consumers are willing to pay even when they don’t have to, if they feel you
deserve it. But before explaining how FairPay addresses that, a few more
key ideas.
Experience
goods and the long tail of customer demand
In thinking about a fair price, it is
natural to think in generalities and to analyze for the “typical” consumer. But
willingness to pay varies widely from customer to customer, as shown in this
demand curve. The Long Tail of Prices is a tail of potential
buyers ordered by the price they are willing to pay.
Conventional set prices lop off the long
tail by refusing to make sales to those unwilling to pay the set price. This
eliminates a potentially significant market, out of fear that selling to those
buyers will cause the other buyers to demand lower prices. Conventional set
prices also lop off the top of the fat head, since the seller gets only the set
price, even from those who might be willing to pay more. So, revenue is only
the green box, even though there is a red surplus at the top of the head, and a
long amber tail to the right. This shows the huge opportunity that FairPay
opens up. No matter what price you pick, it will be right only for a small
fraction of your potential buyers. If my demon could set individualized prices,
we could get revenue from all interested customers.
This long tail problem is especially
challenging because digital products and services are not discrete scarce
“products,” but actually services that are “experience goods.” We are buying
access, entitlements, and usage – and the broader outcomes they enable. The
nature of that value is very personal and depends on how many units of service
are consumed, over what time, with what intensity, and with what results.
On the plus side, digital services are
highly measurable. There is rich data on what was consumed and how. That has a
cost to privacy, but the gain is that it can enable providers to understand at
least key components of the value provided to each user. That data on
individual consumption can be used to help customize prices, and that customization
can be very good for the user when done fairly.
Free
and freemium to reduce pricing risk
The marketing value of free trials has
long been known, and digital has led to a plethora of variations on free, in
the forms of freemium, pay what you want (PWYW), crowdfunding, tipjars, and
free trials. Clearly smart use of free services can reduce pricing risk, but
what is the right level for a given user? The problem with freemium and other
free offers is that it is still a pre-set price – what is the line between free
and paid? However you may set it, it will be wrong for many users, much of the
time. And because we are dealing with experience goods, what is right for a
given user at one time, will be wrong at another time. How can we embrace this
dynamic variability and manage pricing risk?
Post-pricing
– separate the sale from the price
The realization that sparked my original
conception of FairPay was that I would be happy to pay for a service that I
valued after I had experienced that value.
After seeing the long history of digital pricing challenges and watching trials
of “freeware” software and PWYW offers (such as Radiohead’s widely noted PWYW
album offer in 2007), I was reflecting on some services that surprised me at
how much I valued them. It struck me that I never would have been willing to
agree to pay up-front, but I would be happy to pay in hindsight.
By pricing the experience after it is
known, you remove the customer’s risk discount. Up-front pricing requires the
customer to discount for possible disappointment, and that risk often leads
them to not buy at all. And even with PWYW offers, how do we know what price we
want to offer? Studies show that many buyers balk, rather than deal with that
uncertainty. Strangely, very few PWYW offers let users set the price after the
experience (but recent
studies now show that those are far more effective).
Tipping models are the primary exception
to setting prices up front. But even so, the challenge is to get the customer
to actually pay after they have consumed the service.
Managing
pricing risk
Who takes the pricing risk? This comes down to two key issues:
· Who decides the price? We are conditioned
to think it is the seller, but with PWYW and similar offers, it is the buyer.
It can be joint, in the case of auctions, and was traditionally joint in
village markets. Clearly joint determination has the potential to best manage
risk to each party, and to apply the fullest information from both parties on
the nature of the experience and its costs.
· When do they decide it? Before the
selection, at the time of selection, or after the experience? If I buy a cable
TV bundle, do I know which premium channels I will want when I subscribe? At
the start of each month? When I select each program? Do I know what price seems
fair before the end of the month’s viewing?
FairPay leads to multiple levels of
answers. It suggests the best answers are when the decision is joint, and after the experience. That gets closest to what the demon knows.
However, even if the seller unilaterally decides the price, they can do that
better after the experience.
Remember, for digital services, the
provider risks nothing …except the opportunity to take money in exchange for no
value. That will be less and less tolerated.
How
FairPay changes the game
FairPay centers on value throughout the
course of an economic relationship by creating a repeated game that seeks
fairness and cooperation by empowering customers,
engaging in dialog with them, and
tracking their reputation for
fairness.
To see how FairPay changes the game with
simple twist, consider a subscription, as contrasted in the diagram:
· The conventional repeated game
is a one-sided game of customer loyalty:
"Here is our monthly price, take it
or leave it. We hope you will take
the risk--and be satisfied enough that you
will continue this game."
· The FairPay
repeated game is a cooperative game of joint fairness: "We will remove
your pricing risk by letting you pay
what you think is fair for you after each month's use--but we will continue this game (beyond a few
trial cycles) only if we agree that you are being reasonably fair."
A more detailed diagram breaks down the key steps.
1.
The seller sets the basic rules up front,
explaining how this new model works, gives the buyer access, and then at the
end of the period reminds the user what they used and suggests a price they
think fair.
2.
The buyer has access for the period, reviews the
results and suggested price, and is free to adjust that up or down as they
think fair, and is invited to give reasons for any adjustment (using multiple
choice selections).
3.
The seller decides whether to repeat the game by
tracking the price and any reasons given, assessing its fairness, and
considering fairness over prior cycles.
The seller can nudge the buyer toward
being fairer and more generous. They would be especially lenient for an initial
learning period, treating that much like a free trial.
The next diagram shows how this can gain far
more nuance and combine with a conventional paywall as a backstop. They may
start with the paywall and offer FairPay to selected customers they expect to
value their service and be fair. They can offer multiple tiers of service,
starting new FairPay users on a basic tier, holding out premium offers as a
“carrot” to motivate generous payments. The optional “stick” is that those who
are repeatedly unfair can lose their FairPay privilege and be dropped back to
the set-price paywall (or turned away).
This serves as an adaptive and emergent
price discovery engine that applies the repeated game structure to foster
cooperation on both sides, based on empowerment, dialog, and reputation.
· It learns to find the value sweet spot for each customer, and to
dynamically segment customers based on what they value and their fairness
reputation.
· Fairness can be enforced as strictly or leniently as the seller desires
for any given customer or segment.
· Alternatively, there can be no enforcement (making payments purely
voluntary), but still set after the experience, and still in a process that can
individually nudge toward generosity.
· It can be combined with conventional models and offered as a privilege
to the customers who will be most delighted and fair.
· Instead of using occasional sampling and focus groups to discover the
right value proposition in an artificial setting, this can constantly test and
review value propositions for each customer on each real transaction cycle.
Aligning
price with value in the broadest sense – in both directions
Because the FairPay process sets value in
dialog with each user, it can factor in whatever aspects of value the two
parties agree are relevant. That value can include aspects of value that are
generally ignored in pricing, and aspect of value the go from customer to the
“provider.”
· From provider to consumer: not just value in use relating to specific
experiences and outcomes, but other “soft” value, including service and
support; participation, listening, and responsiveness, and social values to the
community, environment, etc.
· From consumer to provider -- a “reverse meter:” Beyond monetary
payments, the dialogs on value can incorporate other currencies, such as
negotiated levels of attention to advertising or use of personal data; credit
for user-generated content or other co-creations such as participatory
journalism, and virality, leads, and volume/loyalty discounts.
Again, the value proposition can consider
whatever factors both parties agree to be relevant. This can include ability to pay in far more nuanced ways
than now common with student and senior discounts. This can include any aspects
of Corporate Social Responsibility (CSR),
Triple Bottom Line, or Environment Social and General (ESG) – and brings
them in to the main financial bottom line. It can make explicit the now
implicit price premium expected by businesses that gain customer approval as
good corporate citizens.
This framework can also extend through
the ecosystem value chain. With the “reverse meter” negotiated attention to ads
makes the user become the customer so that ads are more relevant and
non-intrusive. With aggregators, customers can designate a value share to
specific favorite creators, such as to the artists most listened to and
appreciated on a music service like Spotify. Such contributions can be a
voluntary layer on top of any standard pricing -- effectively a tipping layer
on top of set pricing for the basic service).
Think of this new social contract as an invisible
handshake--an agreement to cooperate to seek a fair level of
financial support to sustain future creation of desired services. That is based
on rich, ongoing conversations about value. What value do I want from you? What
value can you offer to me? What does it cost to produce? What outcomes can I
achieve with it? How do we share fairly in the surplus? Instead of the old
invisible hand that works across a market at a point in time, it is an
agreement that works over the course of our relationship. Unlike the invisible
hand, which works for all customers across the market at a point in time, this
invisible handshake works along each relationship over time.
Dynamic
value discrimination not price discrimination
Many see that FairPay is a form of
dynamic pricing and ask about that. Price discrimination rightfully concerns
consumers because as currently practiced, it is usually done in stealth, as a
way to extract as much of the consumer’s value surplus as possible. But with
FairPay, this is transparent, and the customer opts in to the dynamic price,
actually being the one to set it.
· “Discrimination” can be a negative word, but with FairPay it become
“self-discrimination.” That is why I refer to this as “value discrimination”
rather than “price discrimination.” I argue that “price discrimination” can be good when it is
“value discrimination.”
· FairPay engages consumers in a rewarding process based on jointly
customized value propositions that lead to fair segmentation in all dimensions
of value: context, usage, time, number of users, devices, and ability to pay.
Value discrimination leads to optimal
co-creation of value with optimal sharing of the value surplus.
Key
evidence and enablers – not as crazy as it may seem
While full forms of FairPay have not yet
been proven in practice, the elements behind it are well established.
Modern behavioral economics sheds light on how this
strategy leverages human nature. People are not Homo economicus, purely rational profit maximizers who will never
pay any more than they must. Thousands of PWYW success stories and dozens of
research studies prove that people are Homo
reciprocans, driven to reciprocate fairness with fairness (and even
altruism). This applies in two ways:
· Traits: Individuals vary in how inclined they are to fairness, reciprocity,
altruism and related traits that affect how generously they are willing to pay.
This argues for segmenting users based on their fairness traits.
· Situations: How these traits apply depends on the nature of the relationship.
Economic/exchange norms are coldly business-like, favoring hard-nosed quid pro quo behavior, while
social/communal norms are more friendly and human, favoring more flexibility
and generosity. Even business relationships can enjoy more social/communal
norms when both sides have positive feelings and trust toward the other. This
argues for building the kind of relationship that shifts customers toward those
favorable behavioral norms.
Game theory shows that when a repeated
game is well designed, players will invest in a positive fairness reputation in
order to gain a continuing privilege. If they see that FairPay is a privilege
that benefits them, they will invest in fairness so they can continue to enjoy
that privilege. (My resource guide links to many studies,
including some showing that, as well as some showing that post-pricing enhances
the results of PWYW offers.)
Computer-mediated dialog is rapidly
improving to enable sophisticate dialogs about value to be handled at scale
with only limited need for human intervention. Simple
decision rules can track fairness to control nudging and offer
decisions. As artificial intelligence, predictive analytics, machine learning,
and natural language understanding are applied, the process can gain sophistication
and nuance. A wealth of usage data will enable validation of whether customer’s
reasons for paying less that suggested are honest.
This background bears on the most common
concerns about FairPay:
The
first is: Will people really pay if they do not have to? The behavioral economics makes it clear that most people are happy to
pay when they think it is only fair that they do so. Hopefully, the above
discussion and the evidence in my resource guide shows how FairPay achieves
that, for most people, and allows the free riders who will not play fairly to
be sorted out.
The
second is: Isn’t this much too complicated, putting too much cognitive load on
the customer? That may be the greatest challenge, but
there are ways to limit that. Most importantly, this is a learning experience,
and most of the learning will happen in the first few cycles. Once each
customer has gone through a few cycles, the business will learn what each
customer values and why, and how fair and generous they are, and the customer
will see that. The pricing process can gradually go on autopilot, subject to correction
whenever needed. The suggested prices can be charged, with the understanding
that the customer can come back within a reasonable time to request an
adjustment if they so desire. An even better solution might emerge in the form
of user agent bots that can largely offload that cognitive load from users, as
described in Part 2.
And, especially in the Web Monetization
community, there is a privacy concern.
Also, consider that there is a
well-established model that works much like FairPay – tipping at a restaurant.
We need not tip anything, but most people do, especially at a restaurant that
one frequents (and especially in the US, where tipping is the norm). We may
have a default model of 20% or whatever, but after each meal we do a complex
multivariate assessment that considers many factors, such as courtesy,
helpfulness, efficiency, and broader values. We can do that in a fuzzy way,
with great nuance, usually in no more than a few seconds.
Of course tipping has a cognitive load,
and different people and cultures have different levels of comfort and openness
to the norms of fairness in tipping. As noted, cognitive load can be reduced by
learning to predict what the user will consider fair so the user can opt-in to
autopilot mode (with options for retroactive adjustments) when those
predictions are converging well, and by nudging toward communal norms that
motivate fairness. And unlike FairPay, tipping is done without any provision
for transparent dialog on the perceived value received, the reasons for the
amount of the tip given, and the server’s feedback on fairness. Uses of FairPay
would seek to frame norms for such dialog.
FairPay
works because it does not have to be right all the time. It is enough that it is
approximately right most of the time, the errors tend to average out, and it
converges toward increasing accuracy as we continue to learn. And because we are dealing with low marginal cost services, the
seller can err in favor of the customer whenever in doubt.
FairPay
shows how digital can enable a return to human values
It may now be apparent that FairPay seeks
a return to traditional communal approaches to value exchange that have largely
been lost and almost forgotten in our modern world – but seeks it in a new way.
· My value demon is not new -- it is just a simple formulation of the
model we use when human peers exchange value -- as we have done for millennia
in village markets.
· Negotiating customized prices with the joint participation of the buyer
and seller is not new – FairPay just gives it a new twist to deal with digital
abundance, where the scarcity is sustaining creator resources and share of
customer wallet, not of current supply.
· Centering prices on rich, multidimensional considerations of value, and
with respect to fairness, and communal norms is not new – that was how humans
exchanged value through most of history.
· It is the alienated zero-sum game of mass marketing that is relatively
new, an artifact of the need to scale with inadequate technology -- and that is
a problem we can now transcend.
· Our ability to transcend that is still limited and unfamiliar, but as
we learn, and improve human-centered technology, we can use automation, AI and
ML to enable businesses to act more like humans that have a real relationship
with each customer – and we can create agent services that protect customer
fiduciary interests.
Getting
to FairPay -- Deconstructing the Elements of FairPay
The full form of the FairPay repeated
game described above is obviously a significant change in perspective for both
businesses and consumers. Some people I talk to get the idea immediately and
love it, some are stuck on how to get there and whether it can really work.
Passion economy creators and service providers are among the biggest fans of
FairPay concepts, but most lack the resources to implement the software. That
creates an opportunity for entrepreneurs to facilitate that with SaaS
offerings.
FairPay will be most applicable in the
near term to business that can create passion and loyalty in their customers
(which seems the case for many candidates for Web Monetization) – but most
businesses can do that at least for selected customer segments. Many posts on
my blog address strategies for determining which kinds of
businesses, which services -- and which customer segments to tackle first.
Moves toward FairPay can be stepwise, beginning with baby steps, many of which
are in wide use and well-proven, as outlined in many of those posts.
My post on The Elements of FairPay deconstructs FairPay
into a framework of synergistic elements,
as shown in two tables. These elements can be applied in whatever combination
fits any business context, to move it toward fairer, more effective, and more
efficient relationships, whether in isolated baby steps that are largely
conventional, or in fuller and more novel combinations. In that sense, FairPay
is an innovation architecture for transitioning any business to become better
centered on customer-relationship-value. That post provides a helpful framework
for exploring what lessons FairPay offers regarding Web Monetization and
payments. Here we outline the most relevant aspects.
The first view of this chart (above)
suggests a “ladder of value,” beginning with elements that become more value
centered. The elements are listed in the rows, starting with the most
foundational elements (the lowest rungs) and then elements that amplify the
power. The columns are suggestive of which elements are most relevant to
for-profit and non-profit use cases, with sub-cases for what is common now, and
what is most applicable in low-trust versus high-trust environments. The second
view (below) defines some important combinations of elements relevant to
different stages and use cases.
Full “Gated” FairPay
includes enforcement of fairness to continue playing the game, making FairPay a
revocable privilege. Voluntary FairPay relaxes that to serve as an enhanced
form of PWYW or tipping that still includes key features of post-pricing and
reputation tracking to enable individualized nudging toward fairness. Risk-free
and FairMicroPay are variations that may have special relevance to Web
Monetization.
Risk-free
subscriptions
As I said above, for digital services,
the provider risks nothing …except the opportunity to take money in exchange
for no value. That will be less and less tolerated.
While the best way to manage risk is to
set prices with customer participation, in the full FairPay repeated game, I
propose this “risk-free” model as a way to approximate that while maintaining
full seller control of pricing. Many businesses are hesitant to yield control
until FairPay is more proven, so this is a way for the seller to predict what
the user would do, to set prices based on the seller’s best guess of what my
demon would work out.
●
Think of it as a cable TV bundle
that lets the customer view whatever they want each month, then creates a
bundle price as if they had picked a bundle that would give them just that.
That price can factor in standard versus premium programs and how much was
viewed. It can have a cap on price to avoid risk of “bill shock.” But I can
also start at zero if nothing was viewed that month, and ramp up at a
non-linear rate that can includes a volume discount. A full description is in
my post "Risk-Free" Subscriptions to The Celestial
Jukebox?
FairMicroPay
This simplified form of FairPay was
developed in discussion with businesses seeking to monetize content using
cryptocurrencies in a way that seems to have parallels with Web Monetization
and payments, to add a relationship value-based adjustment layer. The idea is
to add a FairPay layer that adds this:
· Let the user adjust the standard base price within limits, as permitted
by a smart contract:
o Downward as a volume discount, or as a refund/discount for lack of
desired value, or
o Upward as a value-based bonus or sustaining contribution.
· Identify each user and track their fairness reputation, and nudge and
alter price adjustment limits accordingly.
That might achieve much of the
functionality of FairPay in a lightweight way, and that is what I suggest be
considered as minimum functionality that can be layered on top of Web
Monetization and payments protocols. This is explored further in PART 2.
Aggregation
and value-based pricing – no more “subscription hell” or “bundle hell”
FairPay can be applied by individual
creators/service providers or by aggregators. It provides a new way to
harmonize both direct and aggregated models because the value-based prices it
seeks are similarly aligned in either case. With
full FairPay, or even the more limited “risk-free” model, what you pay relates
to the value of what you use, regardless of whether the relationship is direct
or with an aggregator.
· If you want to access a broad array of services with no fuss, use an
aggregator and pay commensurate with the
value received.
· If you have an affinity for a specific service provider, subscribe and
have a direct relationship, and again pay
commensurate with the value received.
· The price with an aggregator may be a bit higher to reflect that
service, or not --their share of the value surplus may be paid by the service
provider, as a marketing cost. As suggested above the balance here may vary
with the context.
· Either way you avoid
“subscription hell” because you are not paying $5 or
$10/month for all you can eat for each service, you only pay for what you do
eat. You can subscribe directly to as many low-volume publishers as you like,
because you do not pay for all you can
eat, only for what you do eat.
· Either way you avoid “bundle
hell” because you automatically get a fair bundle
price, computed after the fact based on what you finally chose to use.
· Either way you can be allowed
to make adjustments if items were disappointing, or to
pay bonuses to specific creators or to all that you used, to the extent you
feel that was warranted.
This can behave far better over a wide
range of usage patterns than either conventional micropayments (pay per item)
or subscriptions (all you can eat for a flat rate). Whether you use the full
form of FairPay with balanced control by both parties, or just the simpler
“risk-free” model where the seller unilaterally estimates what my demon would
do, the result is similar. It all comes down to the shape of the volume
discount curve – how the price changes with volume:
· At low volume, the unit price can start small. It can even start at
zero for new users who are “sampling,” but established users may not start at
that low a unit price, since they know more, and are at low volume.
· As volume increases, the price can increment at a moderate unit rate
that gradually declines at higher volumes.
· As volumes get high, the unit rate can become very small. To eliminate
risk of bill shock, there may be a price cap (after which additional units do
not increment the price at all).
· To match a “risk-free” subscription with a price to a conventional
flat-rate subscription at $10/month, the cap might be higher (maybe
$12-15/month), or not, as noted below. Many users will not be charged even $10,
but the whales might be charged a bit more to produce that same average revenue
per user.
Contrast this to a flat rate, all you can
eat subscription:
· At low volume, the unit rate is very high – the full flat rate for one
item, or even for no items at all.
· At higher volumes, the unit rate declines asymptotically to zero. That
is fair up to a point, but very heavy users get a bargain – an infinite volume
discount -- which drives the price up for more typical users.
· And, remember that we can expect many more users to subscribe to the
risk free plan, since they have no risk of having wasted their money if they
have low usage. That means the cap might not need to be higher than for flat
rate AYCE and might even be lower.
And compare it to pay-per-item
micropayments:
· At low volume, the unit price is moderate, but high enough to deter
many users from sampling. (For example, Blendle charges are typically $.25-.49
for a news article.)
· At increasing volume, the unit price remains at that “moderate” level,
but the meter keeps incrementing rapidly at the same unit rate, with no volume
discount at all.
· At higher volumes the total price becomes far higher than a flat-rate
subscription, sometimes by orders of magnitude – “bill shock.”
Platform
and Database opportunities
FairPay seeks to leverage relationships
to make commerce more win-win. That makes customer relationship databases a
vital tool, both to individual creators/service providers and to aggregators.
FairPay’s reliance on adaptive relationships that center on learning about
value and fairness in a scalable environment supported by automation entails a
non-trivial software requirement to manage these value proposition decision
processes in realtime.
While simple steps up the ladder of value
using some of the Elements may be easy, full forms with fairness enforced by
selective warnings and revocation of FairPay privileges take code. I have
described an example of simple rules-based algorithms for that.
Estimates that have been supported by third parties suggest such an
implementation might require about three person-months each of programmer time
and of business analyst time. Eventually, advanced versions with AI/ML might go
well beyond that.
For the many small service providers who
see FairPay as appealing, the need for such software argues for a SaaS service.
That could be added on by existing SaaS providers like Patreon, Substack,
Medium, and the like, or could come from new entrants. I believe this presents
a huge entrepreneurial opportunity, given the economies of scale and potential
network effects in such an offering.
There is also a network effect in the
FairPay reputation database that can apply in an aggregation context (subject
to suitable privacy controls). The FairPay learning process will develop
valuable data on what each customer values and how fair their pricing is – that
data is central to deciding how to play the fairness game. And ultimately the
converse -- fairness data on which providers are fair in their dealings with
customers could also be applied to the consumers’ benefit.
In an aggregator context, this consumer
fairness reputation score data is much like a credit rating score. A provider
could use fairness scores from a consumer’s prior relationships to decide
whether to make FairPay offers to a consumer they do not know, just as
businesses use credit scores to determine what credit to offer. Think of
FairPay as a process of extending FairPay credit – how much value to provide on
credit before seeing how fair the customer will be in paying for that value.
Providers with high value services might limit offers to only consumers with
high fairness ratings, while a provider seeking wide market distribution might
cast a much wider net.
This could be done without divulging these fairness scores to those businesses, by
having the aggregator (or some other intermediary) make the determination of
who to send offers to -- and to send them on behalf of the offering business --
based on a fairness threshold set by that business. The business would simply
hear back from customers who accepted that offer, and only know that their
fairness score at least met their threshold. Similar consumer data intermediary
models have been proven in practice. (The RxRemedy/HealthScout.com business
that I worked for in the late 1990s did this successfully for sensitive
personal health data.) [I plan to expand
on how such an Offering Interest Agent might work in a future post.]
Value
versus privacy?
Consumers are rightly enraged at the
abuses of what Shoshana Zuboff has called Surveillance
Capitalism. However, there is growing awareness that there are
complex issues of shared data as a public good, and whether the
important issue is not the collection of data per se, but the control of how it is used.
Here, what matters is that FairPay
presents a model of commerce based on cooperation to co-create value. That
leads to the idea that, when properly managed, win-win trust and transparency in dialogs about value can be more
beneficial to consumers than absolute privacy. It is not a zero-sum
question of FairPay dialogs on value
versus privacy, but one of negotiating
a win-win balance of effective FairPay dialogs with agreed limits on what
fairness data is tracked, how it can or cannot be used, and how it can or
cannot be shared. More on this as it relates to Web Monetization and payments
continues in PART 2.
PART 2 – Enabling Fairness
in Web Monetization and payments
Monetization
in perspective – it all depends on context
From the FairPay perspective, prices and
monetary transfers are just “compensating” adjustments that balance the value
exchange. People tend to think of the price and the funds transfer as the whole
measure of the value exchange, but FairPay clarifies that, even with perfectly
fair prices (as set by my value demon), the monetary exchange “price” is just
the “compensation” adjustment that balances out the broader accounting of value
exchange. When we look at the full richness of the value flow to the
“consumer,” we see that the monetary price just balances out that rich
exchange. If we factor in the “reverse meter” flows of value from the
“consumer” to the “provider,” it is even more clear that the price is just the
balancing adjustment. It is impossible to understand value, or that compensating
balance price, without the full context.
In the early days of the Web, as new
business ecosystems were in their infancy, the joke was that this industry was
so immature that companies doing business with one another “do not know who
should be paying who” [in The Red Herring,
around 1994]. Publishers and platforms are still having that argument (most
prominently in Australia recently). YouTube pays
some of its users millions of dollars because their user-generated content is
so valuable.
Value exchange, and the balancing
transfer of money, depends on many complex, situation-dependent factors. Those
factors are no longer determined by the invisible hand and its rationing of
scarce supply. Now they are determined by what it takes to sustain future creation,
and how much share of wallet each consumer is willing to ration to that, for
the services they care about.
At core, value is highly dependent on
context – who, what, when, why, and how. Similarly, prices and pricing risk (or
price-value risk) is also highly dependent on context. This includes
consideration of when it may be appropriate to factor in relationship or volume
discounts, adjustment refunds or discounts for value disappointments,
adjustment bonuses for appreciation of high value, supply chain pass-throughs
to sustain creators, or donations in support of broader value contributions
based on the actual experience and outcomes. Value is also highly dependent on
consumption behaviors that can be tracked and validated with usage
instrumentation – did a user of a content item use it intensively or repeatedly
in valuable contexts, or did they merely start to sample it or briefly skim it?
I have books I refer to repeatedly over months and years, and other books I
have never cracked.
Even if we ignore relationship context,
simple access and usage metrics -- units of items, minutes, words, months --
are a very crude measure of value (whether for actual consumption or for access
rights). This is well-known, but often glossed over in how services are priced.
. Minutes of access to a page of text are very different from minutes of video.
Minutes of access to a Web page do not reflect the kind of attention given
during those minutes, or the value obtained. Different items of a given content
format and scope can be very different in value. Some items or minutes that may
seem equivalent turn out to be valuable and some do not. Early online services
like AOL and CompuServe charged per minute, then shifted to unlimited
subscriptions -- but as explained in Part 1, both map only crudely to value.
Initial
thoughts on Web Monetization and payments directions
My understanding is that those in the Web
Monetization community are struggling to find effective payment models within
desired constraints of privacy and independence from platforms. (It is hard
enough to price value exchange even without those constraints!) My initial
limited review of the status of these efforts suggests a need to address more
clearly how strict adherence to those constraints could severely constrain how
effectively those monetization services can map to the real co-creation of
value for their users. That suggests a need for attention to how those
constraints can be relaxed in a graceful, controlled, selective, incremental,
and well architected way -- especially to the extent that low-level protocol
support is to be built upon. I understand these concerns are recognized and
offer this FairPay perspective to enrich that. [This is based on review of the
proposed Web Monetization, payments, and Interledger standards (and of Coil)
and very limited review of some specific discussions, including WM Provider's Access to Data #3, and Project Insulate, and Micrio, as well as Stephanie
Rieger’s article.]
If monetization does not track to value,
it may be frictionless, private, and independent of platforms and
intermediaries, but it will not be as beneficial economically as alternatives
that relax those constraints. For limited use cases, and for users with strong
requirements for those constraints, that may not be a major concern, but for
broader applicability, it could be very limiting.
This is not to argue for relaxing those
constraints in the low-level protocols, but for ensuring that higher-level
services that support relationship and context can be supported, and for
encouraging the development of those higher-level capabilities.
It also argues for considering what, if
any, functionality can enhance the mapping of monetization to value without
relaxing the desired constraints. To the extent that is possible perhaps it
should be provided for in the low-level protocol. Specifically, that might
include provision for refunds (credits) in cases where the user feels that
expected value for the current page was not received (if the provider so allows).
It also suggests consideration of the opportunity for some intermediate level
of high-privacy / low-relationship support that enables flexibility in pricing
beyond uniform rates per item or per minute, as discussed in the next sections.
Stephanie Rieger’s “layered privacy”
proposal provides a good start to this kind of thinking:
●
“Level 0 is akin to what Coil
offers today...their provider cannot see the sites they are visiting and
...this obfuscation extends to its exchanges with both the wallet and publisher.
As Coil isn’t gathering data, it cannot provide user-facing tools such as
analytics, but users are free to install third-party browser extensions that
do.”
●
“At Level 1 users would opt-in to
limited data collection. Doing so would unlock functionality such as charts
that show their money has been spent, the ability to block sites they prefer
not to pay, and boost payment to sites they most care about. The data collected
to enable this would be clearly explained during opt-in, and users could at any
time clear their history, or revert to Level 0.”
●
“At Level 2 users could opt-in to
share additional data, maybe not in this case used directly by providers, but
shared onward to publishers. This might unlock new APIs enabling publishers to
better interface with users, track and anticipate their spend (or lack thereof
if payment is blocked), or signal what perks are available.”
I would add another dimension to her
layers: such layered extensions might provide support for multiple levels in
the value chain: users, WM providers, publishers, and new kinds of actors, such
as aggregators/bundlers, and infomediaries (as described below).
A
future for privacy-protected context?
In seeking to exchange value with
effective awareness of context, while protecting privacy, I suggest the Web
Monetization community look toward providing for use cases that apply
complementary efforts seeking to better manage the use of consumer data in
commercial contexts.
A classic discussion of such ideas is in
the 1999 book Net Worth
by two McKinsey authors (now dated but still very comprehensive and
compelling). This early proposal has been largely forgotten – presumably
because of critical mass hurdles, as the advertising model and platform
services came to dominate -- but there has been a recent resurgence in similar
proposals. These include Mediators of Individual Data (MIDs) proposed
by Jaron Lanier and colleagues, Information Fiduciaries, and Data Trusts. Related ideas are in development
in the Customer Commons
and ProjectVRM
efforts led by Doc Searls at Harvard’s Berkman Klein Center.
These all propose the creation of
services that work on behalf of consumers to balance their power against
businesses by acting as their agents (with fiduciary duty to each consumer) to
manage selective sharing of data on desired terms as to use, protection, and
monetary or other compensation. I summarize many of these ideas in Reverse the Biz Model! -- Undo the Faustian Bargain for
Ads and Data (with particular focus on advertising issues, as
expanded on in the next section). Web Monetization and related protocols might
be designed to interoperate with infomediary services of this kind to ensure
proper management of the context data that FairPay relationships require.
Such infomediaries might evolve to a new
and richer form of the networks of bots that were envisioned in the early days
of Web commerce to work as “agents” for businesses and for consumers. My guess
is that those visions faded away because of the asymmetry of power and
technology between businesses and consumers. But now the FairPay repeated game
structure offers a new way to balance negotiating powers that may be less
affected by such asymmetry – and in a way that can post-price experience goods
even after the horse has left the barn.
· Advanced forms of FairPay might appear to consumers as embodied in a customer representative bot that has a
continuing personal relationship with them, as the business’s persistent
dedicated contact representative that maintains awareness of their context and
history. It would know them and what they value and manage all their
interactions with the business. Of course, such a bot could partner with human
agents and managers on an exception basis whenever issues needed escalation
beyond what the bot can handle effectively.
· As a converse, consumers might obtain bot services from infomediaries
to serve their interests. Such a customer
agent bot could handle the customer’s interactions in the FairPay repeated
game, reviewing pricing each period and requesting adjustments, and advising
the customer as appropriate.
· Such agents could interact with each other in realtime during all usage
of services, tracking the value exchange and ensuring there are no surprises.
For example, where prices are not capped or freely adjustable, these bots could
advise the user when usage might be exceeding budgeted limits to decide in a
transparent manner whether to renegotiate pricing or throttle usage. They could
also provide ongoing reviews of the interaction and value exchange history to
alert consumers when reviews and adjustments might be needed.
Advertising-related
protocol-based efforts to balance identity
with privacy
Web advertising ecosystems involve
similar issues of identity and privacy, and current efforts to better address
those issues may offer synergies with Web Monetization efforts. There is a huge
amount of attention focused on this now, seeking to find ways to allow
user-controlled levels of advertising and targeting that offer benefits of
useful, relevant, and non-intrusive ads while limiting use of personal data and
activity tracking. There is a growing trend away from the current poorly
controlled use of third-party data (now being accelerated by Apple and Google),
toward sharper controls on first-party and second-party data, and now considering
“zero-party data” that is intentionally shared.
In reaction to current abuses, many
consumers oppose any Web advertising at all. However, there is a strong case
that advertising can be valuable to consumers when done in a way that values
and respects their attention and data – and that advertising is most valuable
to advertisers when it is most valuable to those advertised to. Advertisers and
publishers are increasingly focused on improving that.
One effort that seems particularly
relevant is the recent proposal, Requirements
for a Healthy Ecosystem in Advertising (RHEA). This proposes a
Messageable Opaque Identity (MOI), which builds on WebID by adding a two-way messaging
capability. It provides good background on the relevant issues in the
advertising ecosystem and proposes a requirement that “the browser works for
the user” as a “fiduciary agent” (much like the infomediary proposals, above),
as bound by a specific “User/Agent Covenant.” This may offer a model for at
least some of the relationship identity and activity tracking along with the
messaging features needed for advanced monetization models – and perhaps there
are opportunities for collaboration on common elements. Key parallels in the
balancing of business needs with user privacy include, whether for core value
propositions (and pricing) or for advertising related to potential offers:
· Value co-created by tailoring services and service offers to each user
on a 1:1 basis.
· The value of activity history data to aid in doing that well.
· Ability to learn over time what was valued and why, to predict what
will be valued.
· The value of transparent cooperation and trust in how all of that is
handled, with proper concern for privacy and other dimensions of fairness.
Web Monetization services might build on
the levels model of Rieger using Messageable Opaque Identities. This might
provide for creation of distinct, pair-specific, messaging “tunnels” between
users and selected providers (or aggregators/bundlers) that are persistent for
the duration of the relationship (until revoked or paused by the user). These
might work much like disposable/revocable email addresses. Users could be
enabled to share opaque alias identifiers with publishers and other services
they trust, and that could enable support of relationship-specific data
interchange and messaging at a range of desired levels..
A
FairPay-enhanced Web Monetization provider?
One way to pull these ideas together
might be for an “enhanced” Web Monetization provider (EWMP) to offer separate
“relationship” monetization services that depart from the strict WM requirement
to not track site identity, and to act in part as an infomediary user agent in
doing so. This might apply richly participative forms of FairPay, or the simpler
non-participative “risk-free” (RF) form. Such a provider might offer
FairPay/risk-free monetization only for specific sources that the user opts in
to. They might also combine that with a plan that includes anonymous access to
all sites that have not been opted in to, much as current WM provider Coil now
does.
For the simple “risk-free” offering,
pricing would be entirely controlled by the enhanced WM provider. For each RF
opted-in site, the EWMP might track usage and adjust the payment streaming rate
in accord with that user’s usage for that site in the given period, using a
volume discount curve as described above to set the per minute rate, adjusting
the rate up or down as the month progresses. Instead of the single flat
subscription fee per month from the user to the WM provider, that fee might
start at zero, then increment in correspondence to the payment stream. There
might be a cap for all usage, or a cap for each site. If capped, the payment
rate might be reduced toward zero as the cap was approached. If not capped, the
user might pay at month-end whatever amount corresponded to the total usage for
each RF Website. Even without a cap, progressively increasing volume discounts
could minimize risk of “bill shock.”
An enhanced WM provider offering that
supports more advanced, participatory forms of FairPay might build on the same
structure. It could layer on user interface features that enable the user to
make retroactive adjustments up or down (within limits), and also to enable
nudging by the enhanced WM provider. It might also add either direct or
privacy-opaque communications between the user and the Website to support
nudging by Web site and feedback on value and pricing from the user.
Key
ideas for the Web Monetization community
Hopefully now clearer in nature and
motivation with the above background, here again are the key suggestions I
offer:
· Some form of persistent
identity is essential to many of the most fair and efficient models for value
exchange, including not only subscriptions and memberships (whether flat-rate
or value/usage-based), but advanced forms of voluntary or incentivized donation/tipping/patronship/PWYW
(pay what you want) models.
· A simple protocol for building
on top of Web Monetization might provide that a publisher could ask as part of
its initiation of an access request a “Do I know you?" Replies could be
(1) "Yes, here is the reference to our relationship agreement." (2)
"No, I wish to remain anonymous.” or (3) "No, but let us negotiate a
relationship agreement."
· Those who opt in could
negotiate what data is tracked, for how long, and with what constraints on use
by that publisher, and on any allowable sharing with others. They could also
negotiate what level of personal identification is enabled (in a layered
structure such as Rieger suggests and with possible opaqueness of identity).
Such agreements could be with individual publishers, or with an
aggregator/bundler (with terms that could vary for defined publishers).
· This could empower users and
publishers to maximize privacy and independence from one another, and from any
third parties, while affording the option to relax those constraints to
negotiated levels that may offer better pricing as well as other more win-win
relationship features and perks.
· Such protocols could also
allow for an “infomediary” with a fiduciary duty to serve the user as their
agent, and to reveal only summary or limited data to publishers under defined
conditions. Such infomediaries might also be delegated authority to conduct
negotiations on behalf of the user, thus reducing the cognitive load that such
nuance might otherwise place on the user
· Consider adding support in the
low-level Web Monetization protocol for features such as instant refunds (full
and/or partial) that can enable greater user control to improve pricing
fairness, even without any identification.
· Consider how Web Monetization
and services built upon it relate to parallel issues of identity and
relationship in Web advertising, such as in the Requirements for a Healthy
Ecosystem in Advertising (RHEA) proposal.
· Consider to what extent the The Elements of
FairPay can be supported,
individually and in key combinations, at the protocol level, independent of any
platform.
· Consider whether many of the
above capabilities can be enabled by an “enhanced” WM provider (EWMP) offering
separate “relationship” monetization services that depart from the strict WM
requirement to not track site identity, and to act in part as an infomediary
user agent in doing so.
---
Note: Pro-bono support on
advanced forms of FairPay
I offer free consultation to those
interested in evaluating and applying FairPay and to address questions and
advise on development projects (on an as-available basis). All my ideas on
FairPay are in the public domain. Contact me at fairpay [at] teleshuttle [dot]
com.
Personal note: The roots of these ideas
I clicked a hyperlink in 1969 and saw the
future. Around that time, I saw Doug Engelbart give his demo, and then met with
Ted Nelson to explore his vision (including “transclusion” and micropayments).
My career has spanned digital content and
services businesses of all sizes in diverse technology management and
entrepreneurial roles, including Standard & Poor's and Dow Jones,
pioneering consumer online services in the early-mid 1990s, and as CTO of
HealthScout.com during the initial dot-com boom. While I have worked in both
large and small companies, my focus has always been on how technology can serve
and augment humans. My 52 media-related patents have been licensed to over 200
companies to serve billions of users.
After reading Esther Dyson's prescient Intellectual
Property on the Net in 1994 and watching the slow-motion train-wreck
of the content business model crisis, the core idea of the FairPay repeated
game struck me in 2010 as a new way forward. The broadening of that vision into
the “framework” can be seen in my FairPayZone.com
blog. Notable people who have recognized the appeal of FairPay include Jimmy
Wales, Dan Ariely, and Richard Thaler. My perspectives on broader aspects of
user-centered media are in my other blog, SmartlyIntertwingled.com.
(More in my Bio.)

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