Cascading Bandits for Large-Scale Recommendation Problems

March 17, 2016 ยท Declared Dead ยท ๐Ÿ› Conference on Uncertainty in Artificial Intelligence

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Authors Shi Zong, Hao Ni, Kenny Sung, Nan Rosemary Ke, Zheng Wen, Branislav Kveton arXiv ID 1603.05359 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 129 Venue Conference on Uncertainty in Artificial Intelligence Last Checked 3 months ago
Abstract
Most recommender systems recommend a list of items. The user examines the list, from the first item to the last, and often chooses the first attractive item and does not examine the rest. This type of user behavior can be modeled by the cascade model. In this work, we study cascading bandits, an online learning variant of the cascade model where the goal is to recommend $K$ most attractive items from a large set of $L$ candidate items. We propose two algorithms for solving this problem, which are based on the idea of linear generalization. The key idea in our solutions is that we learn a predictor of the attraction probabilities of items from their features, as opposing to learning the attraction probability of each item independently as in the existing work. This results in practical learning algorithms whose regret does not depend on the number of items $L$. We bound the regret of one algorithm and comprehensively evaluate the other on a range of recommendation problems. The algorithm performs well and outperforms all baselines.
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