The Surprising Effectiveness of SP Voting with Partial Preferences
Hadi Hosseini, Debmalya Mandal, and Amrit Puhan

TL;DR
This paper introduces scalable variants of the Surprising Popular (SP) voting algorithm that use partial preferences, enabling effective ground truth ranking recovery with reduced elicitation costs, validated through large-scale experiments.
Contribution
The authors develop and evaluate new SP algorithm variants that require only partial preferences, improving scalability and performance in large alternative sets.
Findings
Both proposed methods outperform traditional algorithms in ranking accuracy.
Voter behavior and the SP phenomenon are well modeled by a concentric Mallows mixture.
Theoretical bounds on sample complexity support the effectiveness of partial rankings.
Abstract
We consider the problem of recovering the ground truth ordering (ranking, top-, or others) over a large number of alternatives. The wisdom of crowd is a heuristic approach based on Condorcet's Jury theorem to address this problem through collective opinions. This approach fails to recover the ground truth when the majority of the crowd is misinformed. The surprisingly popular (SP) algorithm cite{prelec2017solution} is an alternative approach that is able to recover the ground truth even when experts are in minority. The SP algorithm requires the voters to predict other voters' report in the form of a full probability distribution over all rankings of alternatives. However, when the number of alternatives, , is large, eliciting the prediction report or even the vote over alternatives might be too costly. In this paper, we design a scalable alternative of the SP algorithm which…
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Taxonomy
TopicsGame Theory and Voting Systems
