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2023 | OriginalPaper | Chapter

Mobility and Trust in Algorithms: Attitude of Consumers towards Algorithmic Decision-making Systems in the Mobility Sector

Authors : Jessica Römer, Zunera Rana, Jörn Sickmann, Thomas Pitz, Carina Goldbach

Published in: Towards the New Normal in Mobility

Publisher: Springer Fachmedien Wiesbaden

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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.

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Appendix
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Footnotes
2
The data from the responses of the participants was scaled from 0–100 to 0–5 using R software. This was done to reduce the spread of the data points and had no impact on the significance levels and signs of the coefficients.
 
Literature
go back to reference Atzmüller, C., & Steiner, P. M. (2010). Experimental vignette studies in survey research. Methodology, 6(3), 128–138.CrossRef Atzmüller, C., & Steiner, P. M. (2010). Experimental vignette studies in survey research. Methodology, 6(3), 128–138.CrossRef
go back to reference Auspurg, K., & Hinz, T. (2015). Why and when to use factorial survey methods. Factorial survey experiments (pp. 4–15). SAGE.CrossRef Auspurg, K., & Hinz, T. (2015). Why and when to use factorial survey methods. Factorial survey experiments (pp. 4–15). SAGE.CrossRef
go back to reference Berger, B., Adam, M., Rühr, A., & Benlian, A. (2021). Watch me improve—algorithm aversion and demonstrating the ability to learn. Business & Information Systems Engineering, 63(1), 55–68. Berger, B., Adam, M., Rühr, A., & Benlian, A. (2021). Watch me improve—algorithm aversion and demonstrating the ability to learn. Business & Information Systems Engineering, 63(1), 55–68.
go back to reference Bigman, Y. E., & Gray, K. (2018). People are averse to machines making moral decisions. Cognition, 181, 21–34.CrossRef Bigman, Y. E., & Gray, K. (2018). People are averse to machines making moral decisions. Cognition, 181, 21–34.CrossRef
go back to reference Bogert, E., Schecter, A., & Watson, R. T. (2021). Humans rely more on algorithms than social influence as a task becomes more difficult. Scientific Reports, 11(1), 8028.CrossRef Bogert, E., Schecter, A., & Watson, R. T. (2021). Humans rely more on algorithms than social influence as a task becomes more difficult. Scientific Reports, 11(1), 8028.CrossRef
go back to reference Castelo, N., Bos, M. W., & Lehmann, D. (2019). Task-dependent algorithm aversion. Journal of MArketing Research, 144(1), 114–126. Castelo, N., Bos, M. W., & Lehmann, D. (2019). Task-dependent algorithm aversion. Journal of MArketing Research, 144(1), 114–126.
go back to reference Chander, A. et al. (2018). Working with beliefs: AI transparency in the enterprise. IUI Workshop. Chander, A. et al. (2018). Working with beliefs: AI transparency in the enterprise. IUI Workshop.
go back to reference Dietvorst, B. J., Simmons, J. P., & Massey, C. (2015). Algorithm aversion: People erroneously avoid algorithms after seeing them err. Journal of Experimental Psychology. General, 144(1), 114–126.CrossRef Dietvorst, B. J., Simmons, J. P., & Massey, C. (2015). Algorithm aversion: People erroneously avoid algorithms after seeing them err. Journal of Experimental Psychology. General, 144(1), 114–126.CrossRef
go back to reference Dietvorst, B. J., Simmons, J. P., & Massey, C. (2018). Overcoming algorithm aversion: People will use imperfect algorithms if they can (Even Slightly) modify them. Management Science, 64(3), 1155–1170.CrossRef Dietvorst, B. J., Simmons, J. P., & Massey, C. (2018). Overcoming algorithm aversion: People will use imperfect algorithms if they can (Even Slightly) modify them. Management Science, 64(3), 1155–1170.CrossRef
go back to reference Dong, X., DiScenna, M., & Guerra, E. (2019). Transit user perceptions of driverless buses. Transportation, 46(1), 35–50.CrossRef Dong, X., DiScenna, M., & Guerra, E. (2019). Transit user perceptions of driverless buses. Transportation, 46(1), 35–50.CrossRef
go back to reference Feng, X., & Gao, J. (2020). Is optimal recommendation the best? A laboratory investigation under the newsvendor problem. Decision Support Systems, 131, 113251.CrossRef Feng, X., & Gao, J. (2020). Is optimal recommendation the best? A laboratory investigation under the newsvendor problem. Decision Support Systems, 131, 113251.CrossRef
go back to reference Fenneman, A., Sickmann, J., Pitz, T., & Sanfey, A. G. (2021). Two distinct and separable processes underlie individual differences in algorithm adherence: Differences in predictions and differences in trust thresholds. PLoS ONE, 16(2), e0247084.CrossRef Fenneman, A., Sickmann, J., Pitz, T., & Sanfey, A. G. (2021). Two distinct and separable processes underlie individual differences in algorithm adherence: Differences in predictions and differences in trust thresholds. PLoS ONE, 16(2), e0247084.CrossRef
go back to reference Filiz, I., Judek, J. R., Lorenz, M. & Spiwoks, M. (2021). Reducing algorithm aversion through experience✩. Journal of Behavioral and Experimental Finance, 31. Filiz, I., Judek, J. R., Lorenz, M. & Spiwoks, M. (2021). Reducing algorithm aversion through experience✩. Journal of Behavioral and Experimental Finance, 31.
go back to reference Goodwin, P., Gönül, M. S., & Önkal, D. (2013). Antecedents and effects of trust in forecasting advice. International Journal of Forecasting, 29(2), 354–366. S0169207012001124, 10.1016/j.ijforecast.2012.08.001 Goodwin, P., Gönül, M. S., & Önkal, D. (2013). Antecedents and effects of trust in forecasting advice. International Journal of Forecasting, 29(2), 354–366. S0169207012001124, 10.​1016/​j.​ijforecast.​2012.​08.​001
go back to reference Goldbach, C., Kayar, D., Pitz, T., & Sickmann, J. (2019). Transferring decisions to an algorithm: A simple route choice experiment. Transportation Research Part F: Traffic Psychology and Behaviour, 65, 402–417.CrossRef Goldbach, C., Kayar, D., Pitz, T., & Sickmann, J. (2019). Transferring decisions to an algorithm: A simple route choice experiment. Transportation Research Part F: Traffic Psychology and Behaviour, 65, 402–417.CrossRef
go back to reference Goldbach, C., Sickmann, J., Pitz, T., & Zimasa, T. (2022). Towards autonomous public transportation: Attitudes and intentions of the local population. Transportation Research Interdisciplinary Perspectives, 13(6), 100504.CrossRef Goldbach, C., Sickmann, J., Pitz, T., & Zimasa, T. (2022). Towards autonomous public transportation: Attitudes and intentions of the local population. Transportation Research Interdisciplinary Perspectives, 13(6), 100504.CrossRef
go back to reference Hauser, D., Moss, A. J., Rosenzweig, C., Jaffe, S. N., Robinson, J., & Litman, L. (2021). Evaluating CloudResearch’s Approved Group as a Solution for Problematic Data Quality on MTurk. Hauser, D., Moss, A. J., Rosenzweig, C., Jaffe, S. N., Robinson, J., & Litman, L. (2021). Evaluating CloudResearch’s Approved Group as a Solution for Problematic Data Quality on MTurk.
go back to reference Hengstler, M., Enkel, E., & Duelli, S. (2016). Applied artificial intelligence and trust—The case of autonomous vehicles and medical assistance devices. Technological Forecasting & Social Change, 105, 105–120.CrossRef Hengstler, M., Enkel, E., & Duelli, S. (2016). Applied artificial intelligence and trust—The case of autonomous vehicles and medical assistance devices. Technological Forecasting & Social Change, 105, 105–120.CrossRef
go back to reference Hung, S.-Y., Ku, Y.-C., Liang, T.-P., & Lee, C.-J. (2007). Regret avoidance as a measure of DSS success: An exploratory study. Decision Support Systems, 42(4), 2093–2106.CrossRef Hung, S.-Y., Ku, Y.-C., Liang, T.-P., & Lee, C.-J. (2007). Regret avoidance as a measure of DSS success: An exploratory study. Decision Support Systems, 42(4), 2093–2106.CrossRef
go back to reference Ireland, L. (2020). Who errs? Algorithm aversion, the source of judicial error, and public support for self-help behaviors. Journal of Crime and Justice, 43(2), 174–192.CrossRef Ireland, L. (2020). Who errs? Algorithm aversion, the source of judicial error, and public support for self-help behaviors. Journal of Crime and Justice, 43(2), 174–192.CrossRef
go back to reference Kaufmann, E. (2021). Algorithm appreciation or aversion? Comparing in-service and pre-service teachers’ acceptance of computerized expert models. Computers and Education: Artificial Intelligence (Vol. 2). Kaufmann, E. (2021). Algorithm appreciation or aversion? Comparing in-service and pre-service teachers’ acceptance of computerized expert models. Computers and Education: Artificial Intelligence (Vol. 2).
go back to reference Kawaguchi, K. (2021). When will workers follow an algorithm? A field experiment with a retail business. Management Science, 67(3), 1670–1695.CrossRef Kawaguchi, K. (2021). When will workers follow an algorithm? A field experiment with a retail business. Management Science, 67(3), 1670–1695.CrossRef
go back to reference Kayande, U., de Bruyn, A., Lilien, G. L., Rangaswamy, A., & van Bruggen, G. H. (2009). How incorporating feedback mechanisms in a DSS affects DSS evaluations. Information Systems Research, 20(4), 527–546.CrossRef Kayande, U., de Bruyn, A., Lilien, G. L., Rangaswamy, A., & van Bruggen, G. H. (2009). How incorporating feedback mechanisms in a DSS affects DSS evaluations. Information Systems Research, 20(4), 527–546.CrossRef
go back to reference Keding, C., & Meissner, P. (2021). Managerial overreliance on AI-augmented decision-making processes: How the use of AI-based advisory systems shapes choice behavior in R&D investment decisions. Technological Forecasting and Social Change (Vol. 171). Keding, C., & Meissner, P. (2021). Managerial overreliance on AI-augmented decision-making processes: How the use of AI-based advisory systems shapes choice behavior in R&D investment decisions. Technological Forecasting and Social Change (Vol. 171).
go back to reference Lee, M. K. (2018). Understanding perception of algorithmic decisions: Fairness, trust, and emotion in response to algorithmic management. Big Data & Society, 5(1), 205395171875668.CrossRef Lee, M. K. (2018). Understanding perception of algorithmic decisions: Fairness, trust, and emotion in response to algorithmic management. Big Data & Society, 5(1), 205395171875668.CrossRef
go back to reference Li, Z., Rau, P.-L.P., & Huang, D. (2020). Who should provide clothing recommendation services. Journal of Information Technology Research, 13(3), 113–125.CrossRef Li, Z., Rau, P.-L.P., & Huang, D. (2020). Who should provide clothing recommendation services. Journal of Information Technology Research, 13(3), 113–125.CrossRef
go back to reference Litman, L., Robinson, J., & Abberbock, T. (2017). Turkprime.Com: A versatile crowdsourcing data acquisition platform for the behavioral sciences. Behavior Research Methods, 49(2), 433–442. Litman, L., Robinson, J., & Abberbock, T. (2017). Turkprime.Com: A versatile crowdsourcing data acquisition platform for the behavioral sciences. Behavior Research Methods, 49(2), 433–442.
go back to reference Litterscheidt, R., & Streich, D. J. (2020). Financial education and digital asset management: What’s in the black box? Journal of Behavioral and Experimental Economics, 87(1), 101573.CrossRef Litterscheidt, R., & Streich, D. J. (2020). Financial education and digital asset management: What’s in the black box? Journal of Behavioral and Experimental Economics, 87(1), 101573.CrossRef
go back to reference Mahmud, H., Islam, A. N., Ahmed, S. I., & Smolander, K. (2022). What influences algorithmic decision-making? A systematic literature review on algorithm aversion. Technological Forecasting & Social Change, 175(1), 121390.CrossRef Mahmud, H., Islam, A. N., Ahmed, S. I., & Smolander, K. (2022). What influences algorithmic decision-making? A systematic literature review on algorithm aversion. Technological Forecasting & Social Change, 175(1), 121390.CrossRef
go back to reference Dzindolet, M. T., Pierce, L. G., Beck, H. P., & Dawe, L. A. (2002). The perceived utility of human and automated aids in a visual detection task. Human Factors, 44(1), 79–94.CrossRef Dzindolet, M. T., Pierce, L. G., Beck, H. P., & Dawe, L. A. (2002). The perceived utility of human and automated aids in a visual detection task. Human Factors, 44(1), 79–94.CrossRef
go back to reference Önkal, D., et al. (2009). The relative influence of advice from human experts and statistical methods on forecast adjustments. Journal of Behavioral Decision Making, 22, 390–409.CrossRef Önkal, D., et al. (2009). The relative influence of advice from human experts and statistical methods on forecast adjustments. Journal of Behavioral Decision Making, 22, 390–409.CrossRef
go back to reference Pak, R., Fink, N., Price, M., Bass, B., & Sturre, L. (2012). Decision support aids with anthropomorphic characteristics influence trust and performance in younger and older adults. Ergonomics, 55(9). Pak, R., Fink, N., Price, M., Bass, B., & Sturre, L. (2012). Decision support aids with anthropomorphic characteristics influence trust and performance in younger and older adults. Ergonomics, 55(9).
go back to reference Pallathadka, H., et al. (2022). Investigating the impact of artificial intelligence in education sector by predicting student performance. Materials Today Proceedings, 51(8), 2264–2267.CrossRef Pallathadka, H., et al. (2022). Investigating the impact of artificial intelligence in education sector by predicting student performance. Materials Today Proceedings, 51(8), 2264–2267.CrossRef
go back to reference Peer, E., Rothschild, D., Gordon, A., Evernden, Z., & Damer, E. (2022). Data quality of platforms and panels for online behavioral research. Behavior Research Methods, 54(4), 1643–1662. 10.3758/s13428-021-01694-3 Peer, E., Rothschild, D., Gordon, A., Evernden, Z., & Damer, E. (2022). Data quality of platforms and panels for online behavioral research. Behavior Research Methods, 54(4), 1643–1662. 10.​3758/​s13428-021-01694-3
go back to reference Prahl, A., & Swol, L. V. (2021). Out with the humans, in with the Machines?: Investigating the behavioral and psychological effects of replacing human advisors with a machine. Human-Machine Communication, 2, 209–234.CrossRef Prahl, A., & Swol, L. V. (2021). Out with the humans, in with the Machines?: Investigating the behavioral and psychological effects of replacing human advisors with a machine. Human-Machine Communication, 2, 209–234.CrossRef
go back to reference Promberger, M., & Baron, J. (2006). Do Patients Trust Computers? Journal of Behavioral Decision Making, 19, 455–468.CrossRef Promberger, M., & Baron, J. (2006). Do Patients Trust Computers? Journal of Behavioral Decision Making, 19, 455–468.CrossRef
go back to reference Renier, L. A., Schmid Mast, M., & Bekbergenova, A. (2021). To err is human, not algorithmic—Robust reactions to erring algorithms. Computers in Human Behavior, 124(February), 106879.CrossRef Renier, L. A., Schmid Mast, M., & Bekbergenova, A. (2021). To err is human, not algorithmic—Robust reactions to erring algorithms. Computers in Human Behavior, 124(February), 106879.CrossRef
go back to reference Sauer, C., Auspurg, K., & Hinz, T. (2020). Designing Multi-Factorial Survey Experiments: Effects of Presentation Style (Text or Table), Answering Scales, and Vignette Order. Methods, Data, Analyses, 14(2), 195–214. Sauer, C., Auspurg, K., & Hinz, T. (2020). Designing Multi-Factorial Survey Experiments: Effects of Presentation Style (Text or Table), Answering Scales, and Vignette Order. Methods, Data, Analyses, 14(2), 195–214.
go back to reference Schoettle, B. (2014). A survey of public opinion about autonomous and selfdriving vehicles in the US, UK and Australia. Transportation Research Institute. Schoettle, B. (2014). A survey of public opinion about autonomous and selfdriving vehicles in the US, UK and Australia. Transportation Research Institute.
go back to reference Shaffer, V. A., et al. (2013). Why do patients derogate physicians who use a computer-based diagnostic support system? Medical Decision Making, 33(1), 108–118. Shaffer, V. A., et al. (2013). Why do patients derogate physicians who use a computer-based diagnostic support system? Medical Decision Making, 33(1), 108–118.
go back to reference Smith, A. (2018). Public attitude towards computer algorithms. Pew Research Center. Smith, A. (2018). Public attitude towards computer algorithms. Pew Research Center.
go back to reference Stein, J. P., Appel, M., Jost, A., & Ohler, P. (2020). Matter over mind? How the acceptance of digital entities depends on their appearance, mental prowess, and the interaction between both. International Journal of Human-Computer Studies, 142, 102463. S1071581920300653, 10.1016/j.ijhcs.2020.102463. Stein, J. P., Appel, M., Jost, A., & Ohler, P. (2020). Matter over mind? How the acceptance of digital entities depends on their appearance, mental prowess, and the interaction between both. International Journal of Human-Computer Studies, 142, 102463. S1071581920300653, 10.​1016/​j.​ijhcs.​2020.​102463.
go back to reference Whitecotton, S. M. (1996). The effects of experience and a decision aid on the slope, scatter, and bias of earnings forecasts. Organizational Behavior and Human Decision Processes, 66(1), 111–121.CrossRef Whitecotton, S. M. (1996). The effects of experience and a decision aid on the slope, scatter, and bias of earnings forecasts. Organizational Behavior and Human Decision Processes, 66(1), 111–121.CrossRef
go back to reference Yun, J. H., Lee, E. J., & Kim, D. H. (2021). Behavioral and neural evidence on consumer responses to human doctors and medical artificial intelligence. Psychology & Marketing, 38(4), 610–625. 10.1002/mar.21445 Yun, J. H., Lee, E. J., & Kim, D. H. (2021). Behavioral and neural evidence on consumer responses to human doctors and medical artificial intelligence. Psychology & Marketing, 38(4), 610–625. 10.​1002/​mar.​21445
go back to reference Zhang, L., Pentina, I., & Fan, Y. (2021). Who do you choose? Comparing perceptions of human vs robo-advisor in the context of financial services. Journal of Services Marketing, 35(5), 634–646.CrossRef Zhang, L., Pentina, I., & Fan, Y. (2021). Who do you choose? Comparing perceptions of human vs robo-advisor in the context of financial services. Journal of Services Marketing, 35(5), 634–646.CrossRef
Metadata
Title
Mobility and Trust in Algorithms: Attitude of Consumers towards Algorithmic Decision-making Systems in the Mobility Sector
Authors
Jessica Römer
Zunera Rana
Jörn Sickmann
Thomas Pitz
Carina Goldbach
Copyright Year
2023
DOI
https://doi.org/10.1007/978-3-658-39438-7_33

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