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arxiv: 1606.04130 · v5 · submitted 2016-06-13 · 💻 cs.LG · cs.IR· cs.NE· stat.ML

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Modeling Missing Data in Clinical Time Series with RNNs

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classification 💻 cs.LG cs.IRcs.NEstat.ML
keywords datamissingnessmodelsseriestimeartifactsclinicallinear
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We demonstrate a simple strategy to cope with missing data in sequential inputs, addressing the task of multilabel classification of diagnoses given clinical time series. Collected from the pediatric intensive care unit (PICU) at Children's Hospital Los Angeles, our data consists of multivariate time series of observations. The measurements are irregularly spaced, leading to missingness patterns in temporally discretized sequences. While these artifacts are typically handled by imputation, we achieve superior predictive performance by treating the artifacts as features. Unlike linear models, recurrent neural networks can realize this improvement using only simple binary indicators of missingness. For linear models, we show an alternative strategy to capture this signal. Training models on missingness patterns only, we show that for some diseases, what tests are run can be as predictive as the results themselves.

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  1. The hidden risks of temporal resampling in clinical reinforcement learning

    cs.LG 2026-02 conditional novelty 6.0

    Resampling clinical time series into uniform bins for offline RL reduces performance by up to 60% and causes retrospective evaluations to overestimate returns by 1.5-3x versus unprocessed data.