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arxiv 2211.11762 v1 pith:RT4N4TJI submitted 2022-11-21 cs.LG cs.AI

Hierarchical Graph Structures for Congestion and ETA Prediction

classification cs.LG cs.AI
keywords graphapproachcongestiondataflowhierarchicalinformationpredict
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Traffic4cast is an annual competition to predict spatio temporal traffic based on real world data. We propose an approach using Graph Neural Networks that directly works on the road graph topology which was extracted from OpenStreetMap data. Our architecture can incorporate a hierarchical graph representation to improve the information flow between key intersections of the graph and the shortest paths connecting them. Furthermore, we investigate how the road graph can be compacted to ease the flow of information and make use of a multi-task approach to predict congestion classes and ETA simultaneously. Our code and models are released here: https://github.com/floriangroetschla/NeurIPS2022-traffic4cast

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