Awareness of Voter Passion Greatly Improves the Distortion of Metric Social Choice
June 25, 2019 Β· Declared Dead Β· π Workshop on Internet and Network Economics
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Authors
Ben Abramowitz, Elliot Anshelevich, Wennan Zhu
arXiv ID
1906.10562
Category
cs.AI: Artificial Intelligence
Citations
35
Venue
Workshop on Internet and Network Economics
Last Checked
4 months ago
Abstract
We develop new voting mechanisms for the case when voters and candidates are located in an arbitrary unknown metric space, and the goal is to choose a candidate minimizing social cost: the total distance from the voters to this candidate. Previous work has often assumed that only ordinal preferences of the voters are known (instead of their true costs), and focused on minimizing distortion: the quality of the chosen candidate as compared with the best possible candidate. In this paper, we instead assume that a (very small) amount of information is known about the voter preference strengths, not just about their ordinal preferences. We provide mechanisms with much better distortion when this extra information is known as compared to mechanisms which use only ordinal information. We quantify tradeoffs between the amount of information known about preference strengths and the achievable distortion. We further provide advice about which type of information about preference strengths seems to be the most useful. Finally, we conclude by quantifying the ideal candidate distortion, which compares the quality of the chosen outcome with the best possible candidate that could ever exist, instead of only the best candidate that is actually in the running.
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