ITMLSep 14, 2021

On Distributed Learning with Constant Communication Bits

arXiv:2109.06388v21 citations
Originality Highly original
AI Analysis

This work provides theoretical guidance for designing practical distributed learning rules, addressing a specific communication bottleneck in distributed systems.

The paper tackles the distributed hypothesis testing problem under constant communication bit constraints, showing that encoding empirical distributions achieves optimal error exponents and deriving specific optimal schemes for cases like log2(3) bits or 1-bit transmission.

In this paper, we study a distributed learning problem constrained by constant communication bits. Specifically, we consider the distributed hypothesis testing (DHT) problem where two distributed nodes are constrained to transmit a constant number of bits to a central decoder. In such cases, we show that in order to achieve the optimal error exponents, it suffices to consider the empirical distributions of observed data sequences and encode them to the transmission bits. With such a coding strategy, we develop a geometric approach in the distribution spaces and establish an inner bound of error exponent regions. In particular, we show the optimal achievable error exponents and coding schemes for the following cases: (i) both nodes can transmit $\log_23$ bits; (ii) one of the nodes can transmit $1$ bit, and the other node is not constrained; (iii) the joint distribution of the nodes are conditionally independent given one hypothesis. Furthermore, we provide several numerical examples for illustrating the theoretical results. Our results provide theoretical guidance for designing practical distributed learning rules, and the developed approach also reveals new potentials for establishing error exponents for DHT with more general communication constraints.

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