We introduce Smooth InfoMax (SIM), a self-supervised representation learning method that incorporates interpretability constraints into the latent representations at different depths of the network. Based on β-VAEs, SIM's architecture consists of probabilistic modules optimized locally with the InfoNCE loss to produce Gaussian-distributed representations regularized toward the standard normal distribution. This creates smooth, well-defined, and better-disentangled latent spaces, enabling easier post-hoc analysis. Evaluated on speech data, SIM preserves the large-scale training benefits of Greedy InfoMax while improving the effectiveness of post-hoc interpretability methods across layers.
@article{arxiv.2408.12936,
title = {Smooth InfoMax -- Towards Easier Post-Hoc Interpretability},
author = {Fabian Denoodt and Bart de Boer and José Oramas},
journal= {arXiv preprint arXiv:2408.12936},
year = {2025}
}