Cross Mutual Information
Abstract
Mutual information (MI) is a useful information-theoretic measure to quantify the statistical dependence between two random variables: and . Often, we are interested in understanding how the dependence between and in one set of samples compares to another. Although the dependence between and in each set of samples can be measured separately using MI, these estimates cannot be compared directly if they are based on samples from a non-stationary distribution. Here, we propose an alternative measure for characterising how the dependence between and as defined by one set of samples is expressed in another, \textit{cross mutual information}. We present a comprehensive set of simulation studies sampling data with - dependencies to explore this measure. Finally, we discuss how this relates to measures of model fit in linear regression, and some future applications in neuroimaging data analysis.
Keywords
Cite
@article{arxiv.2507.15372,
title = {Cross Mutual Information},
author = {Chetan Gohil and Oliver M Cliff and James M. Shine and Ben D. Fulcher and Joseph T. Lizier},
journal= {arXiv preprint arXiv:2507.15372},
year = {2025}
}
Comments
9 pages, 6 figures, IEEE Information Theory Workshop 2025