SPLGJun 3, 2019

Revisiting Flow Information for Traffic Prediction

arXiv:1906.00560v16 citations
Originality Incremental advance
AI Analysis

This work addresses traffic prediction for urban planning and management, offering an incremental improvement by integrating flow information into spatiotemporal models.

The paper tackles traffic prediction by incorporating direct traffic flow correlations among regions, which existing methods often overlook, and demonstrates improved accuracy, particularly in scenarios with significant flow changes.

Traffic prediction is a fundamental task in many real applications, which aims to predict the future traffic volume in any region of a city. In essence, traffic volume in a region is the aggregation of traffic flows from/to the region. However, existing traffic prediction methods focus on modeling complex spatiotemporal traffic correlations and seldomly study the influence of the original traffic flows among regions. In this paper, we revisit the traffic flow information and exploit the direct flow correlations among regions towards more accurate traffic prediction. We introduce a novel flow-aware graph convolution to model dynamic flow correlations among regions. We further introduce an integrated Gated Recurrent Unit network to incorporate flow correlations with spatiotemporal modeling. The experimental results on real-world traffic datasets validate the effectiveness of the proposed method, especially on the traffic conditions with a great change on flows.

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