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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence, 32

Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction

March 15, 2023

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Published Date: 2018-02-08

Registration: ISSN 2374-3468 (Online) ISSN 2159-5399 (Print)

Copyright: Published by AAAI Press, Palo Alto, California USA Copyright © 2018, Association for the Advancement of Artificial Intelligence All Rights Reserved.

Authors

Huaxiu Yao

Pennsylvania State University


Fei Wu

Pennsylvania State University


Jintao Ke

Hong Kong University of Science and Technology


Xianfeng Tang

Pennsylvania State University


Yitian Jia

Didi Chuxing


Siyu Lu

Didi Chuxing


Pinghua Gong

Didi Chuxing


Jieping Ye

Didi Chuxing


Zhenhui Li

Pennsylvania State University


DOI:

10.1609/aaai.v32i1.11836


Abstract:

Taxi demand prediction is an important building block to enabling intelligent transportation systems in a smart city. An accurate prediction model can help the city pre-allocate resources to meet travel demand and to reduce empty taxis on streets which waste energy and worsen the traffic congestion. With the increasing popularity of taxi requesting services such as Uber and Didi Chuxing (in China), we are able to collect large-scale taxi demand data continuously. How to utilize such big data to improve the demand prediction is an interesting and critical real-world problem. Traditional demand prediction methods mostly rely on time series forecasting techniques, which fail to model the complex non-linear spatial and temporal relations. Recent advances in deep learning have shown superior performance on traditionally challenging tasks such as image classification by learning the complex features and correlations from large-scale data. This breakthrough has inspired researchers to explore deep learning techniques on traffic prediction problems. However, existing methods on traffic prediction have only considered spatial relation (e.g., using CNN) or temporal relation (e.g., using LSTM) independently. We propose a Deep Multi-View Spatial-Temporal Network (DMVST-Net) framework to model both spatial and temporal relations. Specifically, our proposed model consists of three views: temporal view (modeling correlations between future demand values with near time points via LSTM), spatial view (modeling local spatial correlation via local CNN), and semantic view (modeling correlations among regions sharing similar temporal patterns). Experiments on large-scale real taxi demand data demonstrate effectiveness of our approach over state-of-the-art methods.

Topics: AAAI

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HOW TO CITE:

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction Proceedings of the AAAI Conference on Artificial Intelligence, 32 (2018) .

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction AAAI 2018, .

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li (2018). Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction. Proceedings of the AAAI Conference on Artificial Intelligence, 32, .

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li. Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction. Proceedings of the AAAI Conference on Artificial Intelligence, 32 2018 p..

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li. 2018. Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction. "Proceedings of the AAAI Conference on Artificial Intelligence, 32". .

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li. (2018) "Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction", Proceedings of the AAAI Conference on Artificial Intelligence, 32, p.

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li, "Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction", AAAI, p., 2018.

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li. "Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction". Proceedings of the AAAI Conference on Artificial Intelligence, 32, 2018, p..

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li. "Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction". Proceedings of the AAAI Conference on Artificial Intelligence, 32, (2018): .

Huaxiu Yao||Fei Wu||Jintao Ke||Xianfeng Tang||Yitian Jia||Siyu Lu||Pinghua Gong||Jieping Ye||Zhenhui Li. Deep Multi-View Spatial-Temporal Network for Taxi Demand Prediction. AAAI[Internet]. 2018[cited 2023]; .


ISSN: 2374-3468


Published by AAAI Press, Palo Alto, California USA
Copyright 2022, Association for the Advancement of
Artificial Intelligence 1900 Embarcadero Road, Suite
101, Palo Alto, California 94303 All Rights Reserved

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