Understanding and Modeling the Social Preferences for Riders in Rideshare Matching

Ridesharing is the sharing of trip segments from one place to another among multiple travelers, obviating others’ needs to drive themselves. By having more than one occupant sharing a vehicle, ridesharing aims to reduce personal resources and costs, such as fuel and trip-related costs, and driver st...

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Veröffentlicht in:Transportation (Dordrecht) 2021-08, Vol.48 (4), p.1809-1835
Hauptverfasser: Cui, Yu, Makhija, Ramandeep Singh Manjeet Singh, Chen, Roger B., He, Qing, Khani, Alireza
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container_end_page 1835
container_issue 4
container_start_page 1809
container_title Transportation (Dordrecht)
container_volume 48
creator Cui, Yu
Makhija, Ramandeep Singh Manjeet Singh
Chen, Roger B.
He, Qing
Khani, Alireza
description Ridesharing is the sharing of trip segments from one place to another among multiple travelers, obviating others’ needs to drive themselves. By having more than one occupant sharing a vehicle, ridesharing aims to reduce personal resources and costs, such as fuel and trip-related costs, and driver stress. The objective of this paper is to model the social preferences of rideshare passengers. We identify challenges and barriers people face in ridesharing with respect to whom they share the ride with and model these social preferences to determine the probability of matching for rideshare demand forecasting. An online survey instrument was designed and distributed among the people residing in the United States to uncover their preferences for ridesharing, in addition to the attributes of potential rideshare passengers. Furthermore, using the survey data, a discrete choice model with latent variables was estimated to uncover the relationship between social preferences and matching. We identified 13 attitudinal dimensions characterizing social preference from the survey responses. These 13 variables were further distilled into four latent variables using factor analysis. Four models were estimated for each latent dimension to predict the probabilities of a person pleasantly experiencing his/her shared rides in social aspects from his/her attributes and preferences. Based on the estimated choice model, we developed a matching index derived from preference probabilities that give a compatibility ratio between riders.
doi_str_mv 10.1007/s11116-020-10112-0
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subjects Attributes
Car pools
Decision making models
Discrete choice
Economic forecasting
Economic Geography
Economics
Economics and Finance
Engineering Economics
Factor analysis
Innovation/Technology Management
Logistics
Marketing
Matching
Organization
Passengers
Polls & surveys
Preferences
Regional/Spatial Science
Social factors
Social support
Variables
title Understanding and Modeling the Social Preferences for Riders in Rideshare Matching
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