Demand Forecasting of Online Car-Hailing with Combining LSTM + Attention Approaches

The accurate prediction of online car-hailing demand plays an increasingly important role in real-time scheduling and dynamic pricing. Most studies have found that the demand of online car-hailing is highly correlated with both temporal and spatial distributions of journeys. However, the importance...

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Veröffentlicht in:Electronics (Basel) 2021-10, Vol.10 (20), p.2480
Hauptverfasser: Ye, Xiaofei, Ye, Qiming, Yan, Xingchen, Wang, Tao, Chen, Jun, Li, Song
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container_end_page
container_issue 20
container_start_page 2480
container_title Electronics (Basel)
container_volume 10
creator Ye, Xiaofei
Ye, Qiming
Yan, Xingchen
Wang, Tao
Chen, Jun
Li, Song
description The accurate prediction of online car-hailing demand plays an increasingly important role in real-time scheduling and dynamic pricing. Most studies have found that the demand of online car-hailing is highly correlated with both temporal and spatial distributions of journeys. However, the importance of temporal and spatial sequences is not distinguished in the context of seeking to improve prediction, when in actual fact different time series and space sequences have different impacts on the distribution of demand and supply for online car-hailing. In order to accurately predict the short-term demand of online car-hailing in different regions of a city, a combined attention-based LSTM (LSTM + Attention) model for forecasting was constructed by extracting temporal features, spatial features, and weather features. Significantly, an attention mechanism is used to distinguish the time series and space sequences of order data. The order data in Haikou city was collected as the training and testing datasets. Compared with other forecasting models (GBDT, BPNN, RNN, and single LSTM), the results show that the short-term demand forecasting model LSTM + Attention outperforms other models. The results verify that the proposed model can support advanced scheduling and dynamic pricing for online car-hailing.
doi_str_mv 10.3390/electronics10202480
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Compared with other forecasting models (GBDT, BPNN, RNN, and single LSTM), the results show that the short-term demand forecasting model LSTM + Attention outperforms other models. The results verify that the proposed model can support advanced scheduling and dynamic pricing for online car-hailing.</description><identifier>ISSN: 2079-9292</identifier><identifier>EISSN: 2079-9292</identifier><identifier>DOI: 10.3390/electronics10202480</identifier><language>eng</language><publisher>Basel: MDPI AG</publisher><subject>Accuracy ; Automobile sales ; Deep learning ; Demand ; Dependence ; Economic forecasting ; Feature extraction ; Forecasting ; Mathematical models ; Methods ; Neural networks ; Outdoor air quality ; Passengers ; Pricing ; Scheduling ; Sequences ; Spatial distribution ; Supply &amp; demand ; Time series ; Traffic congestion ; Traffic flow ; Weather forecasting</subject><ispartof>Electronics (Basel), 2021-10, Vol.10 (20), p.2480</ispartof><rights>2021 by the authors. 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source MDPI - Multidisciplinary Digital Publishing Institute; EZB-FREE-00999 freely available EZB journals
subjects Accuracy
Automobile sales
Deep learning
Demand
Dependence
Economic forecasting
Feature extraction
Forecasting
Mathematical models
Methods
Neural networks
Outdoor air quality
Passengers
Pricing
Scheduling
Sequences
Spatial distribution
Supply & demand
Time series
Traffic congestion
Traffic flow
Weather forecasting
title Demand Forecasting of Online Car-Hailing with Combining LSTM + Attention Approaches
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