Off-policy Bandits with Deficient Support

June 16, 2020 ยท Declared Dead ยท ๐Ÿ› Knowledge Discovery and Data Mining

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Authors Noveen Sachdeva, Yi Su, Thorsten Joachims arXiv ID 2006.09438 Category cs.LG: Machine Learning Cross-listed cs.IR, stat.ML Citations 82 Venue Knowledge Discovery and Data Mining Last Checked 3 months ago
Abstract
Learning effective contextual-bandit policies from past actions of a deployed system is highly desirable in many settings (e.g. voice assistants, recommendation, search), since it enables the reuse of large amounts of log data. State-of-the-art methods for such off-policy learning, however, are based on inverse propensity score (IPS) weighting. A key theoretical requirement of IPS weighting is that the policy that logged the data has "full support", which typically translates into requiring non-zero probability for any action in any context. Unfortunately, many real-world systems produce support deficient data, especially when the action space is large, and we show how existing methods can fail catastrophically. To overcome this gap between theory and applications, we identify three approaches that provide various guarantees for IPS-based learning despite the inherent limitations of support-deficient data: restricting the action space, reward extrapolation, and restricting the policy space. We systematically analyze the statistical and computational properties of these three approaches, and we empirically evaluate their effectiveness. In addition to providing the first systematic analysis of support-deficiency in contextual-bandit learning, we conclude with recommendations that provide practical guidance.
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