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A General Framework for Clustering and Distribution Matching with Bandit Feedback

IEEE Transactions on Information Theory (IEEE Trans. Inf. Theory), 2024
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Bibliography:1 Pages
Appendix:23 Pages
Abstract

We develop a general framework for clustering and distribution matching problems with bandit feedback. We consider a KK-armed bandit model where some subset of KK arms is partitioned into MM groups. Within each group, the random variable associated to each arm follows the same distribution on a finite alphabet. At each time step, the decision maker pulls an arm and observes its outcome from the random variable associated to that arm. Subsequent arm pulls depend on the history of arm pulls and their outcomes. The decision maker has no knowledge of the distributions of the arms or the underlying partitions. The task is to devise an online algorithm to learn the underlying partition of arms with the least number of arm pulls on average and with an error probability not exceeding a pre-determined value~δ\delta. Several existing problems fall under our general framework, including finding MM pairs of arms, odd arm identification, and NN-ary clustering of KK arms belong to our general framework. We derive a non-asymptotic lower bound on the average number of arm pulls for any online algorithm with an error probability not exceeding δ\delta. Furthermore, we develop a computationally-efficient online algorithm based on the Track-and-Stop method and Frank--Wolfe algorithm, and show that the average number of arm pulls of our algorithm asymptotically matches that of the lower bound. Our refined analysis also uncovers a novel bound on the speed at which the average number of arm pulls of our algorithm converges to the fundamental limit as δ\delta vanishes.

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