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Poster
in
Workshop: Structured Probabilistic Inference and Generative Modeling

Towards Dynamic Feature Acquisition on Medical Time Series by Maximizing Conditional Mutual Information

Fedor Sergeev · Paola Malsot · Gunnar Ratsch · Vincent Fortuin

Keywords: [ Time Series ] [ dynamic feature acquisition ] [ Deep Learning ] [ ICU ]


Abstract:

Knowing which features of a multivariate time series to measure and at what time is a key task in medicine, wearables, and robotics. Better acquisition policies can reduce costs while maintaining or even improving the performance of downstream predictors. Inspired by the maximization of conditional mutual information, we propose an approach to train acquirers end-to-end using only the downstream loss. We show that our method outperforms random acquisition policy, is close to the performance of a model with an unrestrained budget, but can't match a static acquisition strategy (likely due to the simplicity of its architecture). We highlight the assumptions and outline avenues for future work.

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