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An Information-Theoretic Analysis of The Cost of Decentralization for Learning and Inference Under Privacy Constraints

An Information-Theoretic Analysis of The Cost of Decentralization for Learning and Inference Under Privacy Constraints

来源:Arxiv_logoArxiv
英文摘要

In vertical federated learning (FL), the features of a data sample are distributed across multiple agents. As such, inter-agent collaboration can be beneficial not only during the learning phase, as is the case for standard horizontal FL, but also during the inference phase. A fundamental theoretical question in this setting is how to quantify the cost, or performance loss, of decentralization for learning and/or inference. In this paper, we consider general supervised learning problems with any number of agents, and provide a novel information-theoretic quantification of the cost of decentralization in the presence of privacy constraints on inter-agent communication within a Bayesian framework. The cost of decentralization for learning and/or inference is shown to be quantified in terms of conditional mutual information terms involving features and label variables.

Osvaldo Simeone、Sharu Theresa Jose

10.3390/e24040485

计算技术、计算机技术

Osvaldo Simeone,Sharu Theresa Jose.An Information-Theoretic Analysis of The Cost of Decentralization for Learning and Inference Under Privacy Constraints[EB/OL].(2021-10-11)[2025-07-22].https://arxiv.org/abs/2110.05014.点此复制

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