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Interpolation-Prediction Networks for Irregularly Sampled Time Series

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In this paper, we present a new deep learning architecture for addressing the problem of supervised learning with sparse and irregularly sampled multivariate time series. The architecture is based on the use of a semi-parametric interpolation network followed by the application of a prediction network. The interpolation network allows for information to be shared across multiple dimensions of a multivariate time series during the interpolation stage, while any standard deep learning model can be used for the prediction network. This work is motivated by the analysis of physiological time series data in electronic health records, which are sparse, irregularly sampled, and multivariate. We investigate the performance of this architecture on both classification and regression tasks, showing that our approach outperforms a range of baseline and recently proposed models.

Satya Narayan Shukla, Benjamin M. Marlin• 2019

Related benchmarks

TaskDatasetResultRank
In-hospital mortality predictionMIMIC-III (test)
AUC0.881
49
Clinical predictionMIMIC-III
AUROC83.9
36
Mortality PredictionPhysioNet 2012 (test)
AUC82.6
29
ClassificationPhysioNet
AUC Score0.819
23
Human Activity RecognitionPAMAP2 (test)
Accuracy74.3
21
Mortality PredictionP-Mortality P12 (test)
AUPRC51
19
Mortality PredictionPhysioNet 2019 (test)
AUROC84.6
14
ClassificationHuman Activity
Accuracy0.869
13
Online predictionP-Sepsis (test)
B-Accuracy87.1
9
Mortality PredictionM3-Mortality (M3M) (test)
Accuracy78.3
7
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