MAAIDLSTSep 12, 2013

Inducing Honest Reporting Without Observing Outcomes: An Application to the Peer-Review Process

arXiv:1309.3197v27 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of improving honesty in expert evaluations, such as peer review, but is incremental as it builds on existing scoring rules.

The paper tackles the problem of inducing honest reporting from experts when future outcomes are unobservable, proposing a scoring method based on pairwise comparisons that leads to more accurate reviews than traditional peer-review processes.

When eliciting opinions from a group of experts, traditional devices used to promote honest reporting assume that there is an observable future outcome. In practice, however, this assumption is not always reasonable. In this paper, we propose a scoring method built on strictly proper scoring rules to induce honest reporting without assuming observable outcomes. Our method provides scores based on pairwise comparisons between the reports made by each pair of experts in the group. For ease of exposition, we introduce our scoring method by illustrating its application to the peer-review process. In order to do so, we start by modeling the peer-review process using a Bayesian model where the uncertainty regarding the quality of the manuscript is taken into account. Thereafter, we introduce our scoring method to evaluate the reported reviews. Under the assumptions that reviewers are Bayesian decision-makers and that they cannot influence the reviews of other reviewers, we show that risk-neutral reviewers strictly maximize their expected scores by honestly disclosing their reviews. We also show how the group's scores can be used to find a consensual review. Experimental results show that encouraging honest reporting through the proposed scoring method creates more accurate reviews than the traditional peer-review process.

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