The Limits of Multi-task Peer Prediction
Shuran Zheng, Fang-Yi Yu, Yiling Chen

TL;DR
This paper investigates the fundamental limits of multi-task peer prediction mechanisms, providing a geometric characterization of when such mechanisms are elicitable and identifying the constraints on eliciting participant posteriors.
Contribution
It offers a geometric characterization of elicitable multi-task peer prediction problems and establishes necessary conditions for eliciting properties linear in participants' posteriors.
Findings
Characterization of elicitable problems using geometric methods.
Necessary conditions for general mechanisms to be elicitable.
Mechanisms by Kong and Schoenebeck are optimal for eliciting participant posteriors.
Abstract
Recent advances in multi-task peer prediction have greatly expanded our knowledge about the power of multi-task peer prediction mechanisms. Various mechanisms have been proposed in different settings to elicit different types of information. But we still lack understanding about when desirable mechanisms will exist for a multi-task peer prediction problem. In this work, we study the elicitability of multi-task peer prediction problems. We consider a designer who has certain knowledge about the underlying information structure and wants to elicit certain information from a group of participants. Our goal is to infer the possibility of having a desirable mechanism based on the primitives of the problem. Our contribution is twofold. First, we provide a characterization of the elicitable multi-task peer prediction problems, assuming that the designer only uses scoring mechanisms. Scoring…
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