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The Sample Complexity of Best-kkk Items Selection from Pairwise Comparisons

6 July 2020
Wenbo Ren
Jia Liu
Ness B. Shroff
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Abstract

This paper studies the sample complexity (aka number of comparisons) bounds for the active best-kkk items selection from pairwise comparisons. From a given set of items, the learner can make pairwise comparisons on every pair of items, and each comparison returns an independent noisy result about the preferred item. At any time, the learner can adaptively choose a pair of items to compare according to past observations (i.e., active learning). The learner's goal is to find the (approximately) best-kkk items with a given confidence, while trying to use as few comparisons as possible. In this paper, we study two problems: (i) finding the probably approximately correct (PAC) best-kkk items and (ii) finding the exact best-kkk items, both under strong stochastic transitivity and stochastic triangle inequality. For PAC best-kkk items selection, we first show a lower bound and then propose an algorithm whose sample complexity upper bound matches the lower bound up to a constant factor. For the exact best-kkk items selection, we first prove a worst-instance lower bound. We then propose two algorithms based on our PAC best items selection algorithms: one works for k=1k=1k=1 and is sample complexity optimal up to a loglog factor, and the other works for all values of kkk and is sample complexity optimal up to a log factor.

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