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Online Ranking with Top-1 Feedback

5 October 2014
Sougata Chaudhuri
Ambuj Tewari
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Abstract

We consider a setting where a system learns to rank a fixed set of mmm items. The goal is produce good item rankings for users with diverse interests who interact online with the system for TTT rounds. We consider a novel top-111 feedback model: at the end of each round, the relevance score for only the top ranked object is revealed. However, the performance of the system is judged on the entire ranked list. We provide a comprehensive set of results regarding learnability under this challenging setting. For PairwiseLoss and DCG, two popular ranking measures, we prove that the minimax regret is Θ(T2/3)\Theta(T^{2/3})Θ(T2/3). Moreover, the minimax regret is achievable using an efficient strategy that only spends O(mlog⁡m)O(m \log m)O(mlogm) time per round. The same efficient strategy achieves O(T2/3)O(T^{2/3})O(T2/3) regret for Precision@kkk. Surprisingly, we show that for normalized versions of these ranking measures, i.e., AUC, NDCG \& MAP, no online ranking algorithm can have sublinear regret.

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