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arxiv: 2005.08531 · v1 · pith:RPSGZUIZnew · submitted 2020-05-18 · 📊 stat.ML · cs.LG

Meta-learning with Stochastic Linear Bandits

classification 📊 stat.ML cs.LG
keywords tasksalgorithmbanditslinearbiasclasslearninglearning-to-learn
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We investigate meta-learning procedures in the setting of stochastic linear bandits tasks. The goal is to select a learning algorithm which works well on average over a class of bandits tasks, that are sampled from a task-distribution. Inspired by recent work on learning-to-learn linear regression, we consider a class of bandit algorithms that implement a regularized version of the well-known OFUL algorithm, where the regularization is a square euclidean distance to a bias vector. We first study the benefit of the biased OFUL algorithm in terms of regret minimization. We then propose two strategies to estimate the bias within the learning-to-learn setting. We show both theoretically and experimentally, that when the number of tasks grows and the variance of the task-distribution is small, our strategies have a significant advantage over learning the tasks in isolation.

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