Algorithm Aversion as an Obstacle in the Establishment of Robo Advisors

2022-08-08 | journal article. A publication with affiliation to the University of Göttingen.

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​Algorithm Aversion as an Obstacle in the Establishment of Robo Advisors​
Filiz, I.; Judek, J. R.; Lorenz, M. & Spiwoks, M. ​ (2022) 
Journal of Risk and Financial Management15(8).​ DOI: https://doi.org/10.3390/jrfm15080353 

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Authors
Filiz, Ibrahim; Judek, Jan René; Lorenz, Marco; Spiwoks, Markus 
Abstract
Within the framework of a laboratory experiment, we examine to what extent algorithm aversion acts as an obstacle in the establishment of robo advisors. The subjects had to complete diversification tasks. They could either do this themselves or they could delegate them to a robo advisor. The robo advisor evaluated all the relevant data and always made the decision which led to the highest expected value for the subjects’ payment. Although the high level of efficiency in the robo advisor was clear to see, the subjects only entrusted their decisions to the robo advisor in around 40% of cases. In this way, they reduced their success and their payment. Many subjects orientated themselves towards the 1/n-heuristic, which also contributed to their suboptimal decisions. As long as the subjects had to make decisions for others, they noticeably made a greater effort and were also more successful than when they made decisions for themselves. However, this did not have an effect on their acceptance of robo advisors. Even when they made decisions on behalf of others, the robo advisor was only consulted in around 40% of cases. This tendency towards algorithm aversion among subjects is an obstacle to the broader establishment of robo advisors.
Issue Date
8-August-2022
Journal
Journal of Risk and Financial Management 
Organization
Wirtschaftswissenschaftliche Fakultät 
eISSN
1911-8074
Language
English

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