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Graph Neural Flows for Unveiling Systemic Interactions Among Irregularly Sampled Time Series

About

Interacting systems are prevalent in nature. It is challenging to accurately predict the dynamics of the system if its constituent components are analyzed independently. We develop a graph-based model that unveils the systemic interactions of time series observed at irregular time points, by using a directed acyclic graph to model the conditional dependencies (a form of causal notation) of the system components and learning this graph in tandem with a continuous-time model that parameterizes the solution curves of ordinary differential equations (ODEs). Our technique, a graph neural flow, leads to substantial enhancements over non-graph-based methods, as well as graph-based methods without the modeling of conditional dependencies. We validate our approach on several tasks, including time series classification and forecasting, to demonstrate its efficacy.

Giangiacomo Mercatali, Andre Freitas, Jie Chen• 2024

Related benchmarks

TaskDatasetResultRank
Irregularly Sampled Time Series ForecastingMIMIC
MSE0.8957
34
ClassificationActivity
Accuracy80.8
34
Next observation predictionPhysioNet
MSE0.8207
26
ClassificationPhysioNet
AUC Score0.812
23
Time Series ForecastingSink 5-node graphs
MSE3.95
13
Time Series ForecastingTriangle 5-node graphs
MSE2.32
13
Time Series ForecastingSawtooth 5-node graphs
MSE3.84
13
Time Series ForecastingSquare 5-node graphs
MSE8.24
13
ForecastingUSHCN
MSE0.2205
13
ForecastingHuman Activity
MSE0.3936
13
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