Linear Social Choice with Few Queries: A Moment-Based Approach

Researchers have developed a moment-based approach to social choice that enables accurate and fair collective decision-making using extremely limited voter queries, bridging the gap between theoretical social choice and practical AI alignment.
Computer Science > Computer Science and Game Theory
Title:Linear Social Choice with Few Queries: A Moment-Based Approach
View PDF HTML (experimental)Abstract:Most social choice rules assume access to full rankings, while current alignment practice -- despite aiming for diversity -- typically treats voters as anonymous and comparisons as independent, effectively extracting only about one bit per voter. Motivated by this gap, we study social choice under an extreme communication budget in the linear social choice model, where each voter's utility is the inner product between a latent voter type and the embedding of the context and candidate. The candidate and voter spaces may be very large or even infinite. Our core idea is to model the electorate as an unknown distribution over voter types and to recover its moments as informative summary statistics for candidate selection. We show that one pairwise comparison per voter already suffices to select a candidate that maximizes social welfare, but this elicitation cannot identify the second moment and therefore cannot support objectives that account for inequality. We prove that two pairwise comparisons per voter, or alternatively a single graded comparison, identify the second moment; moreover, these richer queries suffice to identify all moments, and hence the entire voter-type distribution. These results enable principled solutions to a range of social choice objectives including inequality-aware welfare criteria such as taking into account the spread of voter utilities and choosing a representative subset.
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Source: arXiv cs.AI Recent










