SP-Rank: A Dataset for Ranked Preferences with Secondary Information
Hadi Hosseini, Debmalya Mandal, Amrit Puhan

TL;DR
SP-Rank introduces a large-scale dataset with first- and second-order preference data, enabling improved ranking algorithms and analysis of preference aggregation in noisy, real-world scenarios across multiple domains.
Contribution
The paper presents SP-Rank, the first dataset combining first- and second-order preference signals, and benchmarks methods that leverage both for enhanced ranking accuracy.
Findings
Second-order signals improve ranking accuracy significantly.
Combining first- and second-order data outperforms vote-only methods.
SP-Rank supports diverse applications like learning-to-rank and preference modeling.
Abstract
We introduce , the first large-scale, publicly available dataset for benchmarking algorithms that leverage both first-order preferences and second-order predictions in ranking tasks. Each datapoint includes a personal vote (first-order signal) and a meta-prediction of how others will vote (second-order signal), allowing richer modeling than traditional datasets that capture only individual preferences. SP-Rank contains over 12,000 human-generated datapoints across three domains -- geography, movies, and paintings, and spans nine elicitation formats with varying subset sizes. This structure enables empirical analysis of preference aggregation when expert identities are unknown but presumed to exist, and individual votes represent noisy estimates of a shared ground-truth ranking. We benchmark SP-Rank by comparing traditional aggregation methods that use only first-order…
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Taxonomy
TopicsGame Theory and Voting Systems · Mobile Crowdsensing and Crowdsourcing · Ethics and Social Impacts of AI
