Collaborative Information Bottleneck
Mat\'ias Vera, Leonardo Rey Vega, Pablo Piantanida

TL;DR
This paper explores the fundamental limits of multi-terminal source coding problems under a logarithmic loss measure, extending the Information Bottleneck method to multi-source cooperative scenarios with derived bounds and optimality conditions.
Contribution
It introduces and analyzes the Two-way and Distributed Collaborative Information Bottleneck problems, providing inner and outer bounds and characterizing optimality for specific models.
Findings
Derived bounds for the complexity-relevance tradeoff regions.
Characterized optimality in certain cases.
Evaluated results for binary symmetric and Gaussian models.
Abstract
This paper investigates a multi-terminal source coding problem under a logarithmic loss fidelity which does not necessarily lead to an additive distortion measure. The problem is motivated by an extension of the Information Bottleneck method to a multi-source scenario where several encoders have to build cooperatively rate-limited descriptions of their sources in order to maximize information with respect to other unobserved (hidden) sources. More precisely, we study fundamental information-theoretic limits of the so-called: (i) Two-way Collaborative Information Bottleneck (TW-CIB) and (ii) the Collaborative Distributed Information Bottleneck (CDIB) problems. The TW-CIB problem consists of two distant encoders that separately observe marginal (dependent) components and and can cooperate through multiple exchanges of limited information with the aim of extracting information…
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