Forecasting Unobserved Node States with spatio-temporal Graph Neural Networks
Andreas Roth, Thomas Liebig

TL;DR
This paper introduces FUNS, a framework leveraging spatio-temporal Graph Neural Networks to forecast states at unobserved sensor locations, addressing coverage limitations in sensor networks for applications like weather prediction.
Contribution
The paper proposes a novel framework, FUNS, enabling GNNs to predict unobserved node states using only observed data, enhancing generalization in sensor network forecasting.
Findings
GNNs effectively forecast unobserved sensor states.
FUNS generalizes well to unseen locations.
Empirical results on real-world data validate the approach.
Abstract
Forecasting future states of sensors is key to solving tasks like weather prediction, route planning, and many others when dealing with networks of sensors. But complete spatial coverage of sensors is generally unavailable and would practically be infeasible due to limitations in budget and other resources during deployment and maintenance. Currently existing approaches using machine learning are limited to the spatial locations where data was observed, causing limitations to downstream tasks. Inspired by the recent surge of Graph Neural Networks for spatio-temporal data processing, we investigate whether these can also forecast the state of locations with no sensors available. For this purpose, we develop a framework, named Forecasting Unobserved Node States (FUNS), that allows forecasting the state at entirely unobserved locations based on spatio-temporal correlations and the graph…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Traffic Prediction and Management Techniques · Air Quality Monitoring and Forecasting
MethodsGraph Neural Network
