Label Ranking with Partial Abstention based on Thresholded Probabilistic Models

Part of Advances in Neural Information Processing Systems 25 (NIPS 2012)

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Authors

Weiwei Cheng, Eyke Hüllermeier, Willem Waegeman, Volkmar Welker

Abstract

Several machine learning methods allow for abstaining from uncertain predictions. While being common for settings like conventional classification, abstention has been studied much less in learning to rank. We address abstention for the label ranking setting, allowing the learner to declare certain pairs of labels as being incomparable and, thus, to predict partial instead of total orders. In our method, such predictions are produced via thresholding the probabilities of pairwise preferences between labels, as induced by a predicted probability distribution on the set of all rankings. We formally analyze this approach for the Mallows and the Plackett-Luce model, showing that it produces proper partial orders as predictions and characterizing the expressiveness of the induced class of partial orders. These theoretical results are complemented by experiments demonstrating the practical usefulness of the approach.