Disentangling Identifiable Features from Noisy Data with Structured Nonlinear ICA
Abstract
We introduce a new general identifiable framework for principled disentanglement referred to as Structured Nonlinear Independent Component Analysis (SNICA). Our contribution is to extend the identifiability theory of deep generative models for a very broad class of structured models. While previous works have shown identifiability for specific classes of time-series models, our theorems extend this to more general temporal structures as well as to models with more complex structures such as spatial dependencies. In particular, we establish the major result that identifiability for this framework holds even in the presence of noise of unknown distribution. Finally, as an example of our framework's flexibility, we introduce the first nonlinear ICA model for time-series that combines the following very useful properties: it accounts for both nonstationarity and autocorrelation in a fully unsupervised setting; performs dimensionality reduction; models hidden states; and enables principled estimation and inference by variational maximum-likelihood.
Cite
Text
Hälvä et al. "Disentangling Identifiable Features from Noisy Data with Structured Nonlinear ICA." Neural Information Processing Systems, 2021.Markdown
[Hälvä et al. "Disentangling Identifiable Features from Noisy Data with Structured Nonlinear ICA." Neural Information Processing Systems, 2021.](https://mlanthology.org/neurips/2021/halva2021neurips-disentangling/)BibTeX
@inproceedings{halva2021neurips-disentangling,
title = {{Disentangling Identifiable Features from Noisy Data with Structured Nonlinear ICA}},
author = {Hälvä, Hermanni and Le Corff, Sylvain and Lehéricy, Luc and So, Jonathan and Zhu, Yongjie and Gassiat, Elisabeth and Hyvarinen, Aapo},
booktitle = {Neural Information Processing Systems},
year = {2021},
url = {https://mlanthology.org/neurips/2021/halva2021neurips-disentangling/}
}