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Stochastic Contextual Bandits with Graph-based Contexts

2 May 2023
Jittat Fakcharoenphol
Chayutpong Prompak
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Abstract

We naturally generalize the on-line graph prediction problem to a version of stochastic contextual bandit problems where contexts are vertices in a graph and the structure of the graph provides information on the similarity of contexts. More specifically, we are given a graph G=(V,E)G=(V,E)G=(V,E), whose vertex set VVV represents contexts with {\em unknown} vertex label yyy. In our stochastic contextual bandit setting, vertices with the same label share the same reward distribution. The standard notion of instance difficulties in graph label prediction is the cutsize fff defined to be the number of edges whose end points having different labels. For line graphs and trees we present an algorithm with regret bound of O~(T2/3K1/3f1/3)\tilde{O}(T^{2/3}K^{1/3}f^{1/3})O~(T2/3K1/3f1/3) where KKK is the number of arms. Our algorithm relies on the optimal stochastic bandit algorithm by Zimmert and Seldin~[AISTAT'19, JMLR'21]. When the best arm outperforms the other arms, the regret improves to O~(KT⋅f)\tilde{O}(\sqrt{KT\cdot f})O~(KT⋅f​). The regret bound in the later case is comparable to other optimal contextual bandit results in more general cases, but our algorithm is easy to analyze, runs very efficiently, and does not require an i.i.d. assumption on the input context sequence. The algorithm also works with general graphs using a standard random spanning tree reduction.

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