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Collaborative Top Distribution Identifications with Limited Interaction

20 April 2020
Nikolai Karpov
Qin Zhang
Yuanshuo Zhou
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Abstract

We consider the following problem in this paper: given a set of nnn distributions, find the top-mmm ones with the largest means. This problem is also called {\em top-mmm arm identifications} in the literature of reinforcement learning, and has numerous applications. We study the problem in the collaborative learning model where we have multiple agents who can draw samples from the nnn distributions in parallel. Our goal is to characterize the tradeoffs between the running time of learning process and the number of rounds of interaction between agents, which is very expensive in various scenarios. We give optimal time-round tradeoffs, as well as demonstrate complexity separations between top-111 arm identification and top-mmm arm identifications for general mmm and between fixed-time and fixed-confidence variants. As a byproduct, we also give an algorithm for selecting the distribution with the mmm-th largest mean in the collaborative learning model.

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