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Main Authors: Valapu, Sulyab Thottungal, Sarkar, Tamoghna, Coleman, Jared, Avyukt, Anusha, Embrechts, Hugo, Torfs, Dimitri, Minelli, Michele, Krishnamachari, Bhaskar
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2307.15768
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author Valapu, Sulyab Thottungal
Sarkar, Tamoghna
Coleman, Jared
Avyukt, Anusha
Embrechts, Hugo
Torfs, Dimitri
Minelli, Michele
Krishnamachari, Bhaskar
author_facet Valapu, Sulyab Thottungal
Sarkar, Tamoghna
Coleman, Jared
Avyukt, Anusha
Embrechts, Hugo
Torfs, Dimitri
Minelli, Michele
Krishnamachari, Bhaskar
contents We introduce DARSAN, a decentralized review system designed for Non-Fungible Token (NFT) marketplaces, to address the challenge of verifying the quality of highly resalable products with few verified buyers by incentivizing unbiased reviews. DARSAN works by iteratively selecting a group of reviewers (called ``experts'') who are likely to both accurately predict the objective popularity and assess some subjective quality of the assets uniquely associated with NFTs. The system consists of a two-phased review process: a ``pre-listing'' phase where only experts can review the product, and a ``pre-sale'' phase where any reviewer on the system can review the product. Upon completion of the sale, DARSAN distributes incentives to the participants and selects the next generation of experts based on the performance of both experts and non-expert reviewers. We evaluate DARSAN through simulation and show that, once bootstrapped with an initial set of appropriately chosen experts, DARSAN favors honest reviewers and improves the quality of the expert pool over time without any external intervention even in the presence of potentially malicious participants.
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spellingShingle DARSAN: A Decentralized Review System Suitable for NFT Marketplaces
Valapu, Sulyab Thottungal
Sarkar, Tamoghna
Coleman, Jared
Avyukt, Anusha
Embrechts, Hugo
Torfs, Dimitri
Minelli, Michele
Krishnamachari, Bhaskar
Computers and Society
We introduce DARSAN, a decentralized review system designed for Non-Fungible Token (NFT) marketplaces, to address the challenge of verifying the quality of highly resalable products with few verified buyers by incentivizing unbiased reviews. DARSAN works by iteratively selecting a group of reviewers (called ``experts'') who are likely to both accurately predict the objective popularity and assess some subjective quality of the assets uniquely associated with NFTs. The system consists of a two-phased review process: a ``pre-listing'' phase where only experts can review the product, and a ``pre-sale'' phase where any reviewer on the system can review the product. Upon completion of the sale, DARSAN distributes incentives to the participants and selects the next generation of experts based on the performance of both experts and non-expert reviewers. We evaluate DARSAN through simulation and show that, once bootstrapped with an initial set of appropriately chosen experts, DARSAN favors honest reviewers and improves the quality of the expert pool over time without any external intervention even in the presence of potentially malicious participants.
title DARSAN: A Decentralized Review System Suitable for NFT Marketplaces
topic Computers and Society
url https://arxiv.org/abs/2307.15768