Interpreting Differentiable Latent States for Healthcare Time-Series Data
Abstract
Machine learning enables extracting clinical insights from large temporal datasets. The applications of such machine learning models include identifying disease patterns and predicting patient outcomes. However, limited interpretability poses challenges for deploying advanced machine learning in digital healthcare. Understanding the meaning of latent states is crucial for interpreting machine learning models, assuming they capture underlying patterns. In this paper, we present a concise algorithm that allows for i) interpreting latent states using highly related input features; ii) interpreting predictions using subsets of input features via latent states; and iii) interpreting changes in latent states over time. The proposed algorithm is feasible for any model that is differentiable. We demonstrate that this approach enables the identification of a daytime behavioral pattern for predicting nocturnal behavior in a real-world healthcare dataset.
Cite
Text
Chen et al. "Interpreting Differentiable Latent States for Healthcare Time-Series Data." ICML 2023 Workshops: IMLH, 2023.Markdown
[Chen et al. "Interpreting Differentiable Latent States for Healthcare Time-Series Data." ICML 2023 Workshops: IMLH, 2023.](https://mlanthology.org/icmlw/2023/chen2023icmlw-interpreting/)BibTeX
@inproceedings{chen2023icmlw-interpreting,
title = {{Interpreting Differentiable Latent States for Healthcare Time-Series Data}},
author = {Chen, Yu and Bijlani, Nivedita and Kouchaki, Samaneh and Barnaghi, Payam},
booktitle = {ICML 2023 Workshops: IMLH},
year = {2023},
url = {https://mlanthology.org/icmlw/2023/chen2023icmlw-interpreting/}
}