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Spatio-Temporal Traffic Forecasting with Uncertainty Quantification via Bayesian Graph Convolution
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<div class="section abstract"><div class="htmlview paragraph">Traffic prediction plays an important role in urban traffic management and signal
control optimization. As research in this area advances, traffic prediction has
become increasingly accurate. However, the complexity of the traffic system
makes the quantification of uncertainty particularly important, as it is
influenced by various factors such as weather changes, emergencies and road
construction, which lead to the fluctuation and uncertainty of the traffic
state. Although some progress has been made in traffic uncertainty
quantification, most methods remain primarily focused on individual traffic
observation points, with little exploration of the complex spatiotemporal
dependencies at the road network level. In light of this situation, this paper
proposes a spatiotemporal traffic prediction model based on Bayesian graph
convolutional network, which can effectively capture the spatiotemporal
dependence in traffic data, facilitating accurate predictions and comprehensive
uncertainty quantification. Through the design of a mixed loss function, the
model achieves a good balance between the accuracy of point estimation and the
effectiveness of uncertainty quantification. The experimental results show that
the proposed model has high efficiency and stability in dealing with complex
traffic conditions, providing new insights for research in traffic prediction
and uncertainty quantification at the road network level.</div></div>
Title: Spatio-Temporal Traffic Forecasting with Uncertainty Quantification
via Bayesian Graph Convolution
Description:
<div class="section abstract"><div class="htmlview paragraph">Traffic prediction plays an important role in urban traffic management and signal
control optimization.
As research in this area advances, traffic prediction has
become increasingly accurate.
However, the complexity of the traffic system
makes the quantification of uncertainty particularly important, as it is
influenced by various factors such as weather changes, emergencies and road
construction, which lead to the fluctuation and uncertainty of the traffic
state.
Although some progress has been made in traffic uncertainty
quantification, most methods remain primarily focused on individual traffic
observation points, with little exploration of the complex spatiotemporal
dependencies at the road network level.
In light of this situation, this paper
proposes a spatiotemporal traffic prediction model based on Bayesian graph
convolutional network, which can effectively capture the spatiotemporal
dependence in traffic data, facilitating accurate predictions and comprehensive
uncertainty quantification.
Through the design of a mixed loss function, the
model achieves a good balance between the accuracy of point estimation and the
effectiveness of uncertainty quantification.
The experimental results show that
the proposed model has high efficiency and stability in dealing with complex
traffic conditions, providing new insights for research in traffic prediction
and uncertainty quantification at the road network level.
</div></div>.
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