DCM Bandits: Learning to Rank with Multiple Clicks

February 09, 2016 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning

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Authors Sumeet Katariya, Branislav Kveton, Csaba Szepesvรกri, Zheng Wen arXiv ID 1602.03146 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 97 Venue International Conference on Machine Learning Last Checked 3 months ago
Abstract
A search engine recommends to the user a list of web pages. The user examines this list, from the first page to the last, and clicks on all attractive pages until the user is satisfied. This behavior of the user can be described by the dependent click model (DCM). We propose DCM bandits, an online learning variant of the DCM where the goal is to maximize the probability of recommending satisfactory items, such as web pages. The main challenge of our learning problem is that we do not observe which attractive item is satisfactory. We propose a computationally-efficient learning algorithm for solving our problem, dcmKL-UCB; derive gap-dependent upper bounds on its regret under reasonable assumptions; and also prove a matching lower bound up to logarithmic factors. We evaluate our algorithm on synthetic and real-world problems, and show that it performs well even when our model is misspecified. This work presents the first practical and regret-optimal online algorithm for learning to rank with multiple clicks in a cascade-like click model.
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