A survey to measure cognitive biases influencing mobility choices
- URL: http://arxiv.org/abs/2405.03250v1
- Date: Mon, 6 May 2024 08:12:13 GMT
- Title: A survey to measure cognitive biases influencing mobility choices
- Authors: Carole Adam,
- Abstract summary: This paper describes a survey about the perceptions of 4 mobility modes (car, bus, bicycle, walking) and the preferences of users for 6 modal choice factors.
This survey has gathered 650 answers in 2023, that are published as open data.
Work is ongoing to design a simulation-based serious game where the player takes the role of an urban manager faced with planning choices to make their city more sustainable.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In this paper, we describe a survey about the perceptions of 4 mobility modes (car, bus, bicycle, walking) and the preferences of users for 6 modal choice factors. This survey has gathered 650 answers in 2023, that are published as open data. In this study, we analyse these results to highlight the influence of 3 cognitive biases on mobility decisions: halo bias, choice-supportive bias, and reactance. These cognitive biases are proposed as plausible explanations of the observed behaviour, where the population tends to stick to individual cars despite urban policies aiming at favouring soft mobility. This model can serve as the basis for a simulator of mobility decisions in a virtual town, and the gathered data can be used to initialise this population with realistic attributes. Work is ongoing to design a simulation-based serious game where the player takes the role of an urban manager faced with planning choices to make their city more sustainable.
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