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Attentive Crowd Flow Machines

About

Traffic flow prediction is crucial for urban traffic management and public safety. Its key challenges lie in how to adaptively integrate the various factors that affect the flow changes. In this paper, we propose a unified neural network module to address this problem, called Attentive Crowd Flow Machine~(ACFM), which is able to infer the evolution of the crowd flow by learning dynamic representations of temporally-varying data with an attention mechanism. Specifically, the ACFM is composed of two progressive ConvLSTM units connected with a convolutional layer for spatial weight prediction. The first LSTM takes the sequential flow density representation as input and generates a hidden state at each time-step for attention map inference, while the second LSTM aims at learning the effective spatial-temporal feature expression from attentionally weighted crowd flow features. Based on the ACFM, we further build a deep architecture with the application to citywide crowd flow prediction, which naturally incorporates the sequential and periodic data as well as other external influences. Extensive experiments on two standard benchmarks (i.e., crowd flow in Beijing and New York City) show that the proposed method achieves significant improvements over the state-of-the-art methods.

Lingbo Liu, Ruimao Zhang, Jiefeng Peng, Guanbin Li, Bowen Du, Liang Lin• 2018

Related benchmarks

TaskDatasetResultRank
Spatiotemporal Traffic ForecastingMilan-Internet
NRMSE0.1176
63
Traffic PredictionTrentino INTERNET
MAE16.6406
20
Spatio-temporal traffic forecastingMilan-Internet
MAE79.0057
13
Cross-domain Traffic PredictionMilan-Internet
MAE113.4
9
Cross-domain Traffic PredictionTrentino-SMS
MAE6.6483
9
Cross-domain Traffic PredictionMilan-SMS
MAE24.3491
9
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