The Double-Sided Information Bottleneck Function

Entropy (Basel). 2022 Sep 19;24(9):1321. doi: 10.3390/e24091321.

Abstract

A double-sided variant of the information bottleneck method is considered. Let (X,Y) be a bivariate source characterized by a joint pmf PXY. The problem is to find two independent channels PU|X and PV|Y (setting the Markovian structure U→X→Y→V), that maximize I(U;V) subject to constraints on the relevant mutual information expressions: I(U;X) and I(V;Y). For jointly Gaussian X and Y, we show that Gaussian channels are optimal in the low-SNR regime but not for general SNR. Similarly, it is shown that for a doubly symmetric binary source, binary symmetric channels are optimal when the correlation is low and are suboptimal for high correlations. We conjecture that Z and S channels are optimal when the correlation is 1 (i.e., X=Y) and provide supporting numerical evidence. Furthermore, we present a Blahut-Arimoto type alternating maximization algorithm and demonstrate its performance for a representative setting. This problem is closely related to the domain of biclustering.

Keywords: biclustering; information bottleneck; lossy compression; remote source coding.

Grants and funding

The work has been supported by the European Union’s Horizon 2020 Research And Innovation Programme, grant agreement no. 694630, by the ISF under Grant 1641/21, and by the WIN consortium via the Israel minister of economy and science.