Introduction to Token Curated Registries
The key characteristic of modern economy is high efficiency of productive forces in conjunction with high level of availability of capital goods. This is especially relevant for some industries (IT, digital content creation). This fact leads to supply becoming persistently higher than demand in most of the known consumer markets. PR, as well as customer acquisition and retention strategy, has become a part of critical importance for business today: a fight for each customer is hard and surging in each and every industry. It leads to various methods in order to influence customers’ decisions.
One of most prominent and widely used is the set of pre-defined decisions or, merely, the list. It can be seen all around us: on the radio charts of “top hot songs,” to the selection of best whiskey, beers, universities, movies – and it seems to be endless. However, if the context is removed, each of these “selections” is no more than a list of predefined decisions aimed at guiding the customer. The principal issue is that such lists are normally created by a narrow centralized group of people primarily representing their interests in managing customers attention and decision-making. These lists are not representing the interests of customers whatsoever.
Why does such a situation exists? It is quite simple.
This problem of corrupted lists with pre-defined decisions is spanning across all areas of the economy. A possible solution lies in carefully crafted mechanics of technical operation and economic incentives for list creators, participants, and users. This would make the list management following the users’ interests evidently profitable and economically rational.
At the moment, the concept of Token Curated Registry (TCR), that technically meets the aforementioned requirements, is being researched along with attempts to practical implementation. This concept was first introduced in pioneering Mike Goldin’s work[1] and subsequently developed into more complicated TCR-based systems like graded TCRs[2], layered TCRs[3] and others.
A TCR is an example of the Curation Markets concept that was introduced by Simon de la Rouviere[4], and consists of the model of economic incentives for collective curation of information presented in lists. The principal design of the TCR is referred to be one of the most important crypto-economic primitives[5], or elementary building blocks of the crypto-economic systems and token engineering.
Token Curated Registry (TCR) concepts
The basics of a TCR
A TCR concept can be described as a simple economic game that has a purpose to create and maintain an “honest” list that serves the interests of list users. TCR, in itself, is a list that contains some elements. Elements can be presented by virtually anything: service providers, songs, movies, websites and other objects. The main goal of list creation is to include “good” elements and reject “bad’ ones.
Therefore, this proposes to the list users a set of “good” pre-defined decisions about selecting something for their use. The TCR operation mechanics in this part would be described by using the most simple example of binary membership TCR. This means that there are only two states for any element: “in list” and “outside the list”.
In the real world it works as follows: if a product, service or something else is presented in a list, it is exposed to customers, and they will potentially buy or use it. If a product is not presented in list, it is likely to be “out of the game” – customers will not see it as an option of their choice at all.
How does it work exactly?
Before we dive into TCR operation mechanics, it is important to point out that the concept itself is highly-theoretical and therefore contains some open issues that we will not address in depth in this introduction piece. The primary goal of this article is to provide a basic understanding of a new kind of market, related relationships mechanics and highlight some actual challenges. The discussion on challenges can be found in the “Discussion” part.
TCR mechanics are a simple behavioral economics system designed to make correct collective behavior profitable. Primarily, it is achieved through the existence of a set of feedback loops that are connected to actions of each type of actor. The principal feature of the TCR operation mechanics is that all decisions regarding inclusions and removals from the list are taken collectively by a set of list managers or curators. Everyone can become a curator as the system is permissionless.
The two actors in a basic TCR model are presented by four roles:
Simple operation cycle of the TCR mechanics
A simple working cycle of TCR can be described as follows. Candidates will be submitting applications to be included in the list staking a certain number of tokens. Curators will be processing the applications and vote for inclusion or rejection of every candidate. Application rejection leads to transfer of staked tokens to curators who voted “to reject.” In case the application is accepted, a candidate will become a participant and save his token stake.
Users (or “list customers”) will be using the list for decision-making. If the quality of list-provided services does not meet their standards, it is expected that they will stop using it.
The TCR token is introduced to the system with two main goals:
Actor: Curator
Actor: Participant
Hence, the TCR concept is akin to the system of checks and balances. Curators initially have a rational desire to refuse almost all applications. Thus, too “weak” applications or spam submissions would result only in token spending, due to the system’s protection against spam under economic reasons.
The absolute majority of applications cannot be rejected: the list cannot be empty, otherwise it makes no sense. Curators will then have to select the best from available candidates, and they are not interested in conspiring against any particular candidate who meets the standards of quality. This appears due to a user-triggered feedback loop: if the list’s quality drops, users will stop using it. A decrease in the active list users base can be triggered by poor curation which will lead to token demand reduction from candidates, and therefore to price drop. This primarily affects curators as they are the main token holders, and this decision can be seen as shooting yourself in the foot.
Discussion and challenges highlight
It is important to point out that using TCR is necessary only for creating a list with elements that cannot be appraised merely by using a measurable indicator. For example, it seems illogical to use TCR to create a list of the most strong coffee beans, where “how strong” can be easily appraised by chemical tests of caffeine in their composition. On the other hand, TCR usage can be quite reasonable and may be a unique opportunity to create lists that contain complex objects that are sophisticated in assessment. In the modern world, the majority of lists contain these types of elements: movies, universities, artists, tutors, web services and others. It also can be presented in combinations of “objectivity” and “subjectivity” according to the list’s element nature and considered as their combination[6].
TCR, like any complex system, generates more and more questions as you dive into the depths. As noted earlier, practical implementation of the TCR concept is faced with at least, but is not limited to, the following challenges.
Let’s say that you decide to create your own TCR. What questions and challenges do you have to solve to kickstart it properly?
Initial token distribution
Firstly, it is critically important to define the initial capital distribution or initial token distribution scheme. Who would receive first tokens and how? Will there be any incentive program for early adopter motivation? And how do you do this to avoid an appearance of TCR-token whales, that would concentrate voting power in the hands of a narrow group?
Voting mechanics
The next great question is related to curator’s voting. How would the process be correctly designed? Would it be “ordinary” voting with 1 token = 1 vote or would some other mechanics can be used? Is there a minimum polling participation rate? Note that 51% of votes, if the participation rate is 40%, is only 20.4%. How long is a voting period? How would seized tokens from rejected applications be redistributed between curators?
Exact variables definition
The TCR model includes a set of variables that significantly affect correct operation. They consist of the price of the application in terms of TCR tokens (simple question – how many tokens does a candidate need to submit the application, and why precisely this number?). How many elements (or “places”) will there be on the list? How long is the period before re-voting on the question – “throw out or remain in the list” for the list participant?
TCR Token Engineering and Design
Besides the initial token distribution, there are a set of questions to solve related to TCR token engineering. Obviously, the TCR token is frequently considered in the context of Token Bonding Curves[7] as it is one of the ways to establish a market around the token with long-term price and an economic strategy. So, the question follows: how should dependence [Price ~ Emitted amount of tokens] be defined? Will there be any other dependencies that define something in TCR mechanics?
Of course, there are significantly many more questions, even like “can curators include public persons or influencers?” Questions, presented above are widely discussed in the community of researchers and developers, and are used here with the primary goal of highlighting the challenges around practical implementation of TCRs.
Conclusion on Token Curated Registries
The TCR concept undoubtedly has attracted superior attention from researchers in 2018 and found broad adoption in the mind of blockchain social systems architects. Despite its simplicity, the TCR concept at the moment leaves more questions than answers. There are many variables that have to be defined properly to bring this concept to life, as well as the need for more precise mechanics of some “bottlenecks” like curators voting mechanics, pricing of application and some others. This results in the complexity of execution in real projects and has prompted considerable criticism[7],[8]. Nevertheless, at the moment it is quite experimental and theoretical, despite some examples of practical implementation.
In the next series we will make a review of projects that are integrating TCRs in their operational models and make a deeper dive into TCRs operation in a practical context.
In the video below Jackson Palmer explains the basics of Token Curated Registry concepts.
Vasily Sumanov is a consultant at EOI Digital which is a digital transformation agency that uses their result-driven experience to provide excellent service for all your digital needs.
Author is grateful to Amadeo Brands from Transform EOI Digital for participation in discussions and providing valuable comments to this article, originally published here.
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