Eliciting Forecasts from Self-interested Experts: Scoring Rules for Decision Makers
Craig Boutilier (Department of Computer Science, University of, Toronto, Canada)

TL;DR
This paper develops a framework for designing compensation rules that incentivize truthful expert forecasts when experts have inherent interests in the decision outcomes, extending traditional scoring rules to more realistic strategic settings.
Contribution
It introduces a general model for compensation rules that account for expert utility in decision-making, providing a full characterization of proper rules and analyzing scenarios with utility uncertainty.
Findings
Complete characterization of proper compensation rules.
Bounds on expert misreporting incentives under utility uncertainty.
Guidelines for designing compensation rules to mitigate strategic misreporting.
Abstract
Scoring rules for eliciting expert predictions of random variables are usually developed assuming that experts derive utility only from the quality of their predictions (e.g., score awarded by the rule, or payoff in a prediction market). We study a more realistic setting in which (a) the principal is a decision maker and will take a decision based on the expert's prediction; and (b) the expert has an inherent interest in the decision. For example, in a corporate decision market, the expert may derive different levels of utility from the actions taken by her manager. As a consequence the expert will usually have an incentive to misreport her forecast to influence the choice of the decision maker if typical scoring rules are used. We develop a general model for this setting and introduce the concept of a compensation rule. When combined with the expert's inherent utility for decisions, a…
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Taxonomy
TopicsSports Analytics and Performance · Decision-Making and Behavioral Economics · Auction Theory and Applications
