ST-ExpertNet: A Deep Expert Framework for Traffic Prediction
Hongjun Wang, Jiyuan Chen, Zipei Fan, Zhiwen Zhang, Zekun Cai, and, Xuan Song

TL;DR
ST-ExpertNet is an explainable deep learning framework that uses a mixture of specialized experts to improve traffic flow prediction by capturing diverse regional patterns, enhancing interpretability and accuracy.
Contribution
The paper introduces ST-ExpertNet, a novel mixture-of-experts framework that models regional flow patterns separately, improving interpretability and performance in traffic prediction.
Findings
Outperforms existing models in traffic prediction accuracy.
Effectively disentangles city flow patterns aligned with urban layouts.
Demonstrates versatility across different neural network architectures.
Abstract
Recently, forecasting the crowd flows has become an important research topic, and plentiful technologies have achieved good performances. As we all know, the flow at a citywide level is in a mixed state with several basic patterns (e.g., commuting, working, and commercial) caused by the city area functional distributions (e.g., developed commercial areas, educational areas and parks). However, existing technologies have been criticized for their lack of considering the differences in the flow patterns among regions since they want to build only one comprehensive model to learn the mixed flow tensors. Recognizing this limitation, we present a new perspective on flow prediction and propose an explainable framework named ST-ExpertNet, which can adopt every spatial-temporal model and train a set of functional experts devoted to specific flow patterns. Technically, we train a bunch of…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Transportation Planning and Optimization · Traffic control and management
MethodsTanh Activation · Convolution · Sigmoid Activation · ConvLSTM
