Prediction-Constrained Training for Semi-Supervised Mixture and Topic Models
Hughes, Michael C., Weiner, Leah, Hope, Gabriel, McCoy, Thomas H. Jr., Perlis, Roy H., Sudderth, Erik B., Doshi-Velez, Finale
Supervisory signals have the potential to make low-dimensional data representations, like those learned by mixture and topic models, more interpretable and useful. We propose a framework for training latent variable models that explicitly balances two goals: recovery of faithful generative explanations of high-dimensional data, and accurate prediction of associated semantic labels. Existing approaches fail to achieve these goals due to an incomplete treatment of a fundamental asymmetry: the intended application is always predicting labels from data, not data from labels. Our prediction-constrained objective for training generative models coherently integrates loss-based supervisory signals while enabling effective semi-supervised learning from partially labeled data. We derive learning algorithms for semi-supervised mixture and topic models using stochastic gradient descent with automatic differentiation. We demonstrate improved prediction quality compared to several previous supervised topic models, achieving predictions competitive with high-dimensional logistic regression on text sentiment analysis and electronic health records tasks while simultaneously learning interpretable topics.
Jul-23-2017
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- North America > United States (0.67)
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- Research Report
- New Finding (0.48)
- Experimental Study (0.34)
- Research Report
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