Multinomial Logit Bandit with Linear Utility Functions
May 08, 2018 ยท Declared Dead ยท ๐ International Joint Conference on Artificial Intelligence
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Authors
Mingdong Ou, Nan Li, Shenghuo Zhu, Rong Jin
arXiv ID
1805.02971
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
stat.ML
Citations
20
Venue
International Joint Conference on Artificial Intelligence
Last Checked
3 months ago
Abstract
Multinomial logit bandit is a sequential subset selection problem which arises in many applications. In each round, the player selects a $K$-cardinality subset from $N$ candidate items, and receives a reward which is governed by a {\it multinomial logit} (MNL) choice model considering both item utility and substitution property among items. The player's objective is to dynamically learn the parameters of MNL model and maximize cumulative reward over a finite horizon $T$. This problem faces the exploration-exploitation dilemma, and the involved combinatorial nature makes it non-trivial. In recent years, there have developed some algorithms by exploiting specific characteristics of the MNL model, but all of them estimate the parameters of MNL model separately and incur a regret no better than $\tilde{O}\big(\sqrt{NT}\big)$ which is not preferred for large candidate set size $N$. In this paper, we consider the {\it linear utility} MNL choice model whose item utilities are represented as linear functions of $d$-dimension item features, and propose an algorithm, titled {\bf LUMB}, to exploit the underlying structure. It is proven that the proposed algorithm achieves $\tilde{O}\big(dK\sqrt{T}\big)$ regret which is free of candidate set size. Experiments show the superiority of the proposed algorithm.
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