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Graph-Guided Network for Irregularly Sampled Multivariate Time Series

About

In many domains, including healthcare, biology, and climate science, time series are irregularly sampled with varying time intervals between successive readouts and different subsets of variables (sensors) observed at different time points. Here, we introduce RAINDROP, a graph neural network that embeds irregularly sampled and multivariate time series while also learning the dynamics of sensors purely from observational data. RAINDROP represents every sample as a separate sensor graph and models time-varying dependencies between sensors with a novel message passing operator. It estimates the latent sensor graph structure and leverages the structure together with nearby observations to predict misaligned readouts. This model can be interpreted as a graph neural network that sends messages over graphs that are optimized for capturing time-varying dependencies among sensors. We use RAINDROP to classify time series and interpret temporal dynamics on three healthcare and human activity datasets. RAINDROP outperforms state-of-the-art methods by up to 11.4% (absolute F1-score points), including techniques that deal with irregular sampling using fixed discretization and set functions. RAINDROP shows superiority in diverse setups, including challenging leave-sensor-out settings.

Xiang Zhang, Marko Zeman, Theodoros Tsiligkaridis, Marinka Zitnik• 2021

Related benchmarks

TaskDatasetResultRank
ClassificationPAMAP2 original and sensor dropout
Accuracy76.7
48
ClassificationPAMAP2
F1 Score78.6
48
Irregularly Sampled Time Series ForecastingMIMIC
MSE0.6754
34
Mortality PredictionPhysioNet 2012 (test)
AUC82.8
29
Human Activity RecognitionPAMAP2 (test)
Accuracy88.5
28
Next observation predictionPhysioNet
MSE0.3478
26
Irregularly Sampled Time Series ForecastingUSHCN
MSE5.78
21
Irregularly Sampled Time Series ForecastingPhysioNet
MSE9.82
21
Irregularly Sampled Time Series ForecastingHuman Activity
MSE14.92
21
Irregular Time Series ClassificationPhysioNet
AUC-ROC0.827
20
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