Mobility and Trust in Algorithms: Attitude of Consumers towards Algorithmic Decision-making Systems in the Mobility Sector
Jessica Römer (),
Zunera Rana (),
Jörn Sickmann (),
Thomas Pitz () and
Carina Goldbach ()
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Jessica Römer: Hochschule Rhein-Waal
Zunera Rana: Hochschule Rhein-Waal
Jörn Sickmann: Hochschule Rhein-Waal
Thomas Pitz: Hochschule Rhein-Waal
Carina Goldbach: Hochschule Rhein-Waal
A chapter in Towards the New Normal in Mobility, 2023, pp 569-594 from Springer
Abstract:
Abstract Algorithmic decision-making systems are becoming increasingly prominent in the mobility sector through navigation systems, autonomous driving vehicles, infrastructure management and even through their implementation in customer services. However, the advancements in mobility will only be successful if they are accepted and adopted by the majority of the public. In this paper, we test the perception of public towards algorithmic decision-making systems and their willingness to delegate the task within the mobility sector using a factorial survey approach. Unlike the standard one-factor-at-a-time survey analysis, factorial survey gives us an opportunity to test the perception of trust through various dimensions including personality, task and algorithm related factors, spread over different levels. For example, each participant is given a series of scenarios consisting of a combination of dimensions; with every new scenario in the series, the levels of the dimensions are changed. This allows us to reduce internal biases of the participants by affiliating them to the scenario and thus increasing the internal and external validity of our results. Our results indicate that consumers are less algorithm averse when they have more information about the algorithm (increased transparency), when they have some control over the algorithm, when the algorithm has higher accuracy in performing the task and when it is characterized by the ability to learn. Our findings could act as a starting point for a discussion on ways in which consumer trust in algorithmic decision-making systems can be improved.
Keywords: Algorithmic decision-making systems; Trust; Mobility; Algorithm aversion (search for similar items in EconPapers)
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprchp:978-3-658-39438-7_33
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DOI: 10.1007/978-3-658-39438-7_33
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