Aggregating Quantitative Relative Judgments: From Social Choice to Ranking Prediction
Quantitative Relative Judgment Aggregation (QRJA) is a new research topic in (computational) social choice. In the QRJA model, agents provide judgments on the relative quality of different candidates, and the goal is to aggregate these judgments across all agents. In this work, our main conceptual c...
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Zusammenfassung: | Quantitative Relative Judgment Aggregation (QRJA) is a new research topic in
(computational) social choice. In the QRJA model, agents provide judgments on
the relative quality of different candidates, and the goal is to aggregate
these judgments across all agents. In this work, our main conceptual
contribution is to explore the interplay between QRJA in a social choice
context and its application to ranking prediction. We observe that in QRJA,
judges do not have to be people with subjective opinions; for example, a race
can be viewed as a "judgment" on the contestants' relative abilities. This
allows us to aggregate results from multiple races to evaluate the contestants'
true qualities. At a technical level, we introduce new aggregation rules for
QRJA and study their structural and computational properties. We evaluate the
proposed methods on data from various real races and show that QRJA-based
methods offer effective and interpretable ranking predictions. |
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DOI: | 10.48550/arxiv.2410.05550 |