Robust Active Preference Elicitation
Phebe Vayanos, Yingxiao Ye, Duncan McElfresh, John Dickerson, Eric, Rice

TL;DR
This paper develops robust optimization methods for eliciting decision-maker preferences through pairwise comparisons, improving high-stakes recommendations in offline and online settings, with applications in resource allocation.
Contribution
It introduces a novel robust optimization framework for preference elicitation that handles uncertainty and decision-dependent information, with practical algorithms for both offline and online scenarios.
Findings
Outperforms existing methods in worst-case rank and regret
Provides an equivalent mixed-binary linear program for offline elicitation
Demonstrates practical application in homeless resource allocation
Abstract
We study the problem of eliciting the preferences of a decision-maker through a moderate number of pairwise comparison queries to make them a high quality recommendation for a specific problem. We are motivated by applications in high stakes domains, such as when choosing a policy for allocating scarce resources to satisfy basic needs (e.g., kidneys for transplantation or housing for those experiencing homelessness) where a consequential recommendation needs to be made from the (partially) elicited preferences. We model uncertainty in the preferences as being set based and} investigate two settings: a) an offline elicitation setting, where all queries are made at once, and b) an online elicitation setting, where queries are selected sequentially over time in an adaptive fashion. We propose robust optimization formulations of these problems which integrate the preference elicitation and…
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Taxonomy
TopicsEconomic and Environmental Valuation · Multi-Criteria Decision Making · Game Theory and Voting Systems
