Simulating the impact of cognitive biases on the mobility transition
- URL: http://arxiv.org/abs/2302.03554v1
- Date: Tue, 7 Feb 2023 16:06:26 GMT
- Title: Simulating the impact of cognitive biases on the mobility transition
- Authors: Carole Adam
- Abstract summary: This paper explores various cognitive biases that can explain lack of adaptation to climate change.
Our approach is to design simple interactive simulators that users can play with in order to understand biases.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Climate change is becoming more visible, and human adaptation is required
urgently to prevent greater damage. One particular domain of adaptation
concerns daily mobility (work commute), with a significant portion of these
trips being done in individual cars. Yet, their impact on pollution, noise, or
accidents is well-known. This paper explores various cognitive biases that can
explain such lack of adaptation. Our approach is to design simple interactive
simulators that users can play with in order to understand biases. The idea is
that awareness of such cognitive biases is often a first step towards more
rational decision making, even though things are not that simple. This paper
reports on three simulators, each focused on a particular factor of resistance.
Various scenarios are simulated to demonstrate their explanatory power. These
simulators are already available to play online, with the goal to provide users
with food for thought about how mobility could evolve in the future. Work is
still ongoing to design a user survey to evaluate their impact.
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