![]() ![]() ![]() These topics were included in five mainstreams as follows: (1) abundant studies often focus only on determinant analysis on given transportation (taxi, transit, online car-hailing) the exploration of ridership patterns for a multi-modal transportation mode is rare furthermore, multiple aspects of factors were not considered synchronously in a wide time span (2) travel behavior research mainly concentrates on the commuting trips and distribution patterns of various travel indices (e.g., distance, displacement, time) (3) the taxi driver-searching strategy can be divided into autopsychic cruising and system dispatching (4) the spatio-temporal distribution character of TTOC's fuel consumption (FC) and greenhouse gas (GHG) emissions has become a hotspot recently, and there has been a recommendation for electric taxi (ET) in urban cities to decrease transportation congestion is proposed and (5) based on TTOC and point of interest (POI) multi-source data, many machine learning algorithms were used to predict travel condition indices, land use, and travel behavior. From the perspectives of peoples (e.g., passenger, driver, and policymaker), vehicle, road, and environment, this paper describes the current research status of TTOC's big data in six hot topics, including the ridership factor, spatio-temporal distribution and travel behavior, cruising strategy and passenger service market partition, route planning, transportation emission and new-energy, and TTOC's data extensional application. The purpose of this paper is to provide a summary of a quick overview of the latest developments and unprecedented opportunities for scholars who want to set foot in the field of traditional taxi and online car-hailing (TTOC). ![]()
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