How machine learning informs ride-hailing services: A survey
Reviewartikel, 2022

In recent years, online ride-hailing services have emerged as an important component of urban transportation system, which not only provide significant ease for residents’ travel activities, but also shape new travel behavior and diversify urban mobility patterns. This study provides a thorough review of machine-learning-based methodologies for on-demand ride-hailing services. The importance of on-demand ride-hailing services in the spatio-temporal dynamics of urban traffic is first highlighted, with machine-learning-based macro-level ride-hailing research demonstrating its value in guiding the design, planning, operation, and control of urban intelligent transportation systems. Then, the research on travel behavior from the perspective of individual mobility patterns, including carpooling behavior and modal choice behavior, is summarized. In addition, existing studies on order matching and vehicle dispatching strategies, which are among the most important components of on-line ride-hailing systems, are collected and summarized. Finally, some of the critical challenges and opportunities in ride-hailing services are discussed.

Individual mobility patterns

Ride-hailing services

Machine learning

Traffic dynamics

Författare

Yang Liu

Transportgruppen

Tsinghua University

Ruo Jia

Transportgruppen

Jieping Ye

University of Michigan

Xiaobo Qu

Tsinghua University

Communications in Transportation Research

27724247 (eISSN)

Vol. 2 100075

Ämneskategorier

Annan data- och informationsvetenskap

Transportteknik och logistik

Övrig annan teknik

Styrkeområden

Transport

DOI

10.1016/j.commtr.2022.100075

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Senast uppdaterat

2024-01-03