LGSTOct 14, 2022

Federated Best Arm Identification with Heterogeneous Clients

arXiv:2210.07780v39 citationsh-index: 36
Originality Incremental advance
AI Analysis

This addresses efficient resource allocation in federated learning systems with heterogeneous data, though it is incremental as it builds on existing federated bandit frameworks.

The paper tackles the problem of identifying the best arm for each client in a federated multi-armed bandit setting with heterogeneous clients, where arms yield Gaussian observations, and provides an algorithm that is asymptotically almost-optimal with bounded communication intervals as error probability vanishes.

We study best arm identification in a federated multi-armed bandit setting with a central server and multiple clients, when each client has access to a {\em subset} of arms and each arm yields independent Gaussian observations. The goal is to identify the best arm of each client subject to an upper bound on the error probability; here, the best arm is one that has the largest {\em average} value of the means averaged across all clients having access to the arm. Our interest is in the asymptotics as the error probability vanishes. We provide an asymptotic lower bound on the growth rate of the expected stopping time of any algorithm. Furthermore, we show that for any algorithm whose upper bound on the expected stopping time matches with the lower bound up to a multiplicative constant ({\em almost-optimal} algorithm), the ratio of any two consecutive communication time instants must be {\em bounded}, a result that is of independent interest. We thereby infer that an algorithm can communicate no more sparsely than at exponential time instants in order to be almost-optimal. For the class of almost-optimal algorithms, we present the first-of-its-kind asymptotic lower bound on the expected number of {\em communication rounds} until stoppage. We propose a novel algorithm that communicates at exponential time instants, and demonstrate that it is asymptotically almost-optimal.

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