Skip to main content

Parallel Contests for Crowdsourcing Reviews: Existence and Quality of Equilibria

AFT '22

Motivated by the intricacies of allocating treasury funds in blockchain settings, we study the problem of crowdsourcing reviews for many different proposals, in parallel. During the reviewing phase, every reviewer can select the proposals to write reviews for, as well as the quality of each review. The quality levels follow certain very coarse community guidelines and can have values such as ‘excellent’ or ‘good’. Based on these scores and the distribution of reviews, every reviewer will receive some reward for their efforts. In this paper, we design a reward scheme and show that it always has pure Nash equilibria, for any set of proposals and reviewers. In addition, we show that these equilibria guarantee constant factor approximations for two natural metrics: the total quality of all reviews, as well as the fraction of proposals that received at least one review, compared to the optimal outcome.

Related papers

Partner with research

Investing in and contributing to Input Output Research means supporting one of the most rigorous and peer-reviewed blockchain R&D efforts in the world. Our work bridges academia and industry, advancing decentralization, security and scalability while creating open knowledge that benefits the entire ecosystem. Whether through funding, collaboration, or partnership, contributors play a vital role in shaping innovations that are ethical, impactful and built to endure.