Prediction-Constrained Topic Models for Antidepressant Recommendation
Abstract
Supervisory signals can help topic models discover low-dimensional data representations that are more interpretable for clinical tasks. We propose a framework for training supervised latent Dirichlet allocation that balances two goals: faithful generative explanations of high-dimensional data and accurate prediction of associated class labels. Existing approaches fail to balance these goals by not properly handling a fundamental asymmetry: the intended task is always predicting labels from data, not data from labels. Our new prediction-constrained objective trains models that predict labels from heldout data well while also producing good generative likelihoods and interpretable topic-word parameters. In a case study on predicting depression medications from electronic health records, we demonstrate improved recommendations compared to previous supervised topic models and high- dimensional logistic regression from words alone.
Cite
@article{arxiv.1712.00499,
title = {Prediction-Constrained Topic Models for Antidepressant Recommendation},
author = {Michael C. Hughes and Gabriel Hope and Leah Weiner and Thomas H. McCoy and Roy H. Perlis and Erik B. Sudderth and Finale Doshi-Velez},
journal= {arXiv preprint arXiv:1712.00499},
year = {2017}
}
Comments
Accepted poster at NIPS 2017 Workshop on Machine Learning for Health (https://ml4health.github.io/2017/)