LGSISOC-PHSep 8, 2022

Hierarchical Graph Pooling is an Effective Citywide Traffic Condition Prediction Model

arXiv:2209.03629v1h-index: 11
Originality Synthesis-oriented
AI Analysis

This work addresses traffic prediction for urban management, but it is incremental as it applies existing pooling methods to this domain.

The paper tackles traffic condition prediction by applying hierarchical graph pooling methods to reduce graph information redundancy, achieving improved predictive performance compared to baselines.

Accurate traffic conditions prediction provides a solid foundation for vehicle-environment coordination and traffic control tasks. Because of the complexity of road network data in spatial distribution and the diversity of deep learning methods, it becomes challenging to effectively define traffic data and adequately capture the complex spatial nonlinear features in the data. This paper applies two hierarchical graph pooling approaches to the traffic prediction task to reduce graph information redundancy. First, this paper verifies the effectiveness of hierarchical graph pooling methods in traffic prediction tasks. The hierarchical graph pooling methods are contrasted with the other baselines on predictive performance. Second, two mainstream hierarchical graph pooling methods, node clustering pooling and node drop pooling, are applied to analyze advantages and weaknesses in traffic prediction. Finally, for the mentioned graph neural networks, this paper compares the predictive effects of different graph network inputs on traffic prediction accuracy. The efficient ways of defining graph networks are analyzed and summarized.

Foundations

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