Slow Feature Analysis as Variational Inference Objective
Abstract
This work presents a novel probabilistic interpretation of Slow Feature Analysis (SFA) through the lens of variational inference. Unlike prior formulations that recover linear SFA from Gaussian state-space models with linear emissions, this approach relaxes the key constraint of linearity. While it does not lead to full equivalence to non-linear SFA, it recasts the classical slowness objective in a variational framework. Specifically, it allows the slowness objective to be interpreted as a regularizer to a reconstruction loss. Furthermore, we provide arguments, why -- from the perspective of slowness optimization -- the reconstruction loss takes on the role of the constraints that ensure informativeness in SFA. We conclude with a discussion of potential new research directions.
Cite
@article{arxiv.2506.00580,
title = {Slow Feature Analysis as Variational Inference Objective},
author = {Merlin Schüler and Laurenz Wiskott},
journal= {arXiv preprint arXiv:2506.00580},
year = {2025}
}