PLoS ONE (Jan 2023)

The extent of algorithm aversion in decision-making situations with varying gravity

  • Ibrahim Filiz,
  • Jan René Judek,
  • Marco Lorenz,
  • Markus Spiwoks

Journal volume & issue
Vol. 18, no. 2

Abstract

Read online

Algorithms already carry out many tasks more reliably than human experts. Nevertheless, some subjects have an aversion towards algorithms. In some decision-making situations an error can have serious consequences, in others not. In the context of a framing experiment, we examine the connection between the consequences of a decision-making situation and the frequency of algorithm aversion. This shows that the more serious the consequences of a decision are, the more frequently algorithm aversion occurs. Particularly in the case of very important decisions, algorithm aversion thus leads to a reduction of the probability of success. This can be described as the tragedy of algorithm aversion.