Double-Linear Thompson Sampling For Context-Attentive Bandits
Djallel Bouneffouf, Raphael Feraud, Sohini Upadhyay, Yasaman Khazaeni, Irina Rish
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In this paper, we analyze and extend an online learning framework known as Context-Attentive Bandit , motivated by various practical applications, from medical diagnosis to dialog systems, where due to observation costs only a small subset of a potentially large number of context variables can be observed at each iteration; however, the agent has a freedom to choose which variables to observe. We derive a novel algorithm, called Context-Attentive Thompson Sampling (CATS) , which builds upon the Linear Thompson Sampling approach, adapting it to Context-Attentive Bandit setting. We provide a theoretical regret analysis and an extensive empirical evaluation demonstrating advantages of the proposed approach over several baseline methods on a variety of real-life datasets.
Chairs:
Chang Yoo