Calibrated Preference Learning: The Case of Label Ranking 文章

ArXiv CS.AI2026-06-01NEWSen作者: Santo M. A. R. Thies, Viktor Bengs, Timo Kaufmann, Sebastian J. Vollmer, Eyke H\"ullermeier

摘要

arXiv:2605.30447v1 Announce Type: cross Abstract: Calibration, the alignment of predicted probabilities with true outcome frequencies, is essential for reliable decision-making. While extensively studied for classification and regression, calibration has not been formally addressed for probabilistic label ranking, where the goal is to predict a distribution over orderings of a label set. Naively treating rankings as classes ignores their structure and fails to capture important modalities such as pairwise and top-k predictions. We formalize calibration for label ranking and develop a hierarchy of notions covering full rankings, sub-rankings, and top-k rankings. We prove that full-rank calibration implies the others but not conversely, and sub-ranking and top-k calibration are incomparable. Empirically, we find popular label ranking models are often poorly calibrated, with substantial differences between sub-ranking and top-k metrics.

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Calibrated Preference Learning: The Case of Label Ranking
2026-06-01PRODUCT_LAUNCH影响: MEDIUM

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