Mixture of Coupled HMMs for Robust Modeling of Multivariate Healthcare Time Series

November 14, 2023 ยท Declared Dead ยท ๐Ÿ› ML4H@NeurIPS

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Authors Onur Poyraz, Pekka Marttinen arXiv ID 2311.07867 Category cs.LG: Machine Learning Cross-listed stat.AP, stat.ML Citations 3 Venue ML4H@NeurIPS Last Checked 4 months ago
Abstract
Analysis of multivariate healthcare time series data is inherently challenging: irregular sampling, noisy and missing values, and heterogeneous patient groups with different dynamics violating exchangeability. In addition, interpretability and quantification of uncertainty are critically important. Here, we propose a novel class of models, a mixture of coupled hidden Markov models (M-CHMM), and demonstrate how it elegantly overcomes these challenges. To make the model learning feasible, we derive two algorithms to sample the sequences of the latent variables in the CHMM: samplers based on (i) particle filtering and (ii) factorized approximation. Compared to existing inference methods, our algorithms are computationally tractable, improve mixing, and allow for likelihood estimation, which is necessary to learn the mixture model. Experiments on challenging real-world epidemiological and semi-synthetic data demonstrate the advantages of the M-CHMM: improved data fit, capacity to efficiently handle missing and noisy measurements, improved prediction accuracy, and ability to identify interpretable subsets in the data.
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