Factors Influencing Matching of Ride-Hailing Service Using Machine Learning Method

被引:9
作者
Do, Myungsik [1 ]
Byun, Wanhee [2 ]
Shin, Doh Kyoum [3 ]
Jin, Hyeryun [4 ]
机构
[1] Hanbat Natl Univ, Dept Urban Engn, Daejeon 34158, South Korea
[2] Land & Housing Inst, Future Strategy Res Ctr, Daejeon 34047, South Korea
[3] Mokwon Univ, DataWiz Ltd, Daejeon 35349, South Korea
[4] Hanbat Natl Univ, Ctr Infrastruct Asset Management, Daejeon 34158, South Korea
关键词
machine learning; ride-hailing service; decision tree; trip distance; CLASSIFICATION;
D O I
10.3390/su11205615
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
It is common to call a taxi by taxi-apps in Korea and it was believed that an app-taxi service would provide customers with more convenience. However, customers' requests can often be denied, as taxi drivers can decide whether to take calls from customers or not. Therefore, studies on factors that determine whether taxi drivers refuse or accept calls from customers are needed. This study investigated why taxi drivers might refuse calls from customers and factors that influence the success of matching within the service. This study used origin-destination data in Seoul and Daejeon obtained from T-map Taxis, which was analyzed via a decision tree using machine learning. Cross-validation was also performed. Results showed that distance, socio-economic features, and land uses affected matching success rate. Furthermore, distance was the most important factor in both Seoul and Daejeon. The matching success rate in Seoul was lowest for trips shorter than the average at midnight. In Daejeon, the rate was lowest when the calls were made for trips either shorter or longer than the average distance. This study showed that the matching success for ride-hailing services can be differentiated particularly by the distance of the requested trip depending on the size of the city.
引用
收藏
页数:13
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