$k$-Sliced Mutual Information: A Quantitative Study of Scalability with Dimension
Abstract
Sliced mutual information (SMI) is defined as an average of mutual information (MI) terms between one-dimensional random projections of the random variables. It serves as a surrogate measure of dependence to classic MI that preserves many of its properties but is more scalable to high dimensions. However, a quantitative characterization of how SMI itself and estimation rates thereof depend on the ambient dimension, which is crucial to the understanding of scalability, remain obscure. This work provides a multifaceted account of the dependence of SMI on dimension, under a broader framework termed $k$-SMI, which considers projections to $k$-dimensional subspaces. Using a new result on the continuity of differential entropy in the 2-Wasserstein metric, we derive sharp bounds on the error of Monte Carlo (MC)-based estimates of $k$-SMI, with explicit dependence on $k$ and the ambient dimension, revealing their interplay with the number of samples. We then combine the MC integrator with the neural estimation framework to provide an end-to-end $k$-SMI estimator, for which optimal convergence rates are established. We also explore asymptotics of the population $k$-SMI as dimension grows, providing Gaussian approximation results with a residual that decays under appropriate moment bounds. All our results trivially apply to SMI by setting $k=1$. Our theory is validated with numerical experiments and is applied to sliced InfoGAN, which altogether provide a comprehensive quantitative account of the scalability question of $k$-SMI, including SMI as a special case when $k=1$.
Cite
Text
Goldfeld et al. "$k$-Sliced Mutual Information: A Quantitative Study of Scalability with Dimension." Neural Information Processing Systems, 2022.Markdown
[Goldfeld et al. "$k$-Sliced Mutual Information: A Quantitative Study of Scalability with Dimension." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/goldfeld2022neurips-ksliced/)BibTeX
@inproceedings{goldfeld2022neurips-ksliced,
title = {{$k$-Sliced Mutual Information: A Quantitative Study of Scalability with Dimension}},
author = {Goldfeld, Ziv and Greenewald, Kristjan and Nuradha, Theshani and Reeves, Galen},
booktitle = {Neural Information Processing Systems},
year = {2022},
url = {https://mlanthology.org/neurips/2022/goldfeld2022neurips-ksliced/}
}