Deep Sequence Learning with Auxiliary Information for Traffic Prediction

13 Jun 2018  ·  Binbing Liao, Jingqing Zhang, Chao Wu, Douglas McIlwraith, Tong Chen, Shengwen Yang, Yike Guo, Fei Wu ·

Predicting traffic conditions from online route queries is a challenging task as there are many complicated interactions over the roads and crowds involved. In this paper, we intend to improve traffic prediction by appropriate integration of three kinds of implicit but essential factors encoded in auxiliary information. We do this within an encoder-decoder sequence learning framework that integrates the following data: 1) offline geographical and social attributes. For example, the geographical structure of roads or public social events such as national celebrations; 2) road intersection information. In general, traffic congestion occurs at major junctions; 3) online crowd queries. For example, when many online queries issued for the same destination due to a public performance, the traffic around the destination will potentially become heavier at this location after a while. Qualitative and quantitative experiments on a real-world dataset from Baidu have demonstrated the effectiveness of our framework.

PDF Abstract

Datasets


Introduced in the Paper:

Q-Traffic

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Traffic Prediction Q-Traffic hybrid Seq2Seq MAPE 8.63 # 1

Methods


No methods listed for this paper. Add relevant methods here