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Supporting Data and Software for the paper: An instance-based learning approach for evaluating the perception of ride-hailing waiting time variability

Datacite citation style

Geržinič, Nejc; Oded Cats; van Oort, Niels; Hoogendoorn-Lanser, Sascha; Hoogendoorn, S.P.(Serge) et. al. (2023): Supporting Data and Software for the paper: An instance-based learning approach for evaluating the perception of ride-hailing waiting time variability. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/45cae66c-7eb3-4e04-85a9-59f6e26cfbb9.v1
Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite

Dataset

Version 2 - 2023-03-23 (latest)
Version 1 - 2023-03-21
Delft University of Technology logo

Usage statistics

1184
views
694
downloads

Geolocation

Netherlands

Time coverage

2021

Licence

CC BY-NC 4.0

The files included below are part of the CriticalMaaS research on ride-hailing and on-demand transport services. In this study, passengers' perception of waiting time variability was analysed.

 

Respondents were presented with 32 hypothetical scenarios with immediate feedback on the performance of their selected alternatives. This feedback information was then incorporated into their decision-making for the following scenario.


For more information, the pre-print of the paper is available on: https://arxiv.org/abs/2301.04982


Information on the data and model can be found in the README file and the python script below.

History

  • 2023-03-21 first online, published, posted

Publisher

4TU.ResearchData

Format

*.py, *.html,*.csv,*.docx

Funding

  • CriticalMaaS (grant code 804469) European Research Council

Organizations

TU Delft,
Faculty of Civil Engineering and Geosciences,
Department of Transport and Planning,
Smart Public Transport Lab

DATA

Files (5)