Short-term Road Traffic Prediction based on Deep Cluster at Large-scale Networks
Lingyi Han, Kan Zheng, Long Zhao, Xianbin Wang, and Xuemin Shen

TL;DR
This paper introduces a deep clustering framework for large-scale short-term traffic prediction, leveraging CNNs and recurrent neural networks to improve efficiency and accuracy in modeling diverse traffic patterns.
Contribution
The paper proposes a novel deep clustering approach combined with group-based RNN models for scalable and efficient short-term traffic prediction at large network scales.
Findings
DeepCluster effectively clusters road segments with similar patterns.
Group-based models achieve comparable accuracy to individual models.
Framework reduces model count and computational cost.
Abstract
Short-term road traffic prediction (STTP) is one of the most important modules in Intelligent Transportation Systems (ITS). However, network-level STTP still remains challenging due to the difficulties both in modeling the diverse traffic patterns and tacking high-dimensional time series with low latency. Therefore, a framework combining with a deep clustering (DeepCluster) module is developed for STTP at largescale networks in this paper. The DeepCluster module is proposed to supervise the representation learning in a visualized way from the large unlabeled dataset. More specifically, to fully exploit the traffic periodicity, the raw series is first split into a number of sub-series for triplets generation. The convolutional neural networks (CNNs) with triplet loss are utilized to extract the features of shape by transferring the series into visual images. The shape-based…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Time Series Analysis and Forecasting · Automated Road and Building Extraction
MethodsTriplet Loss
