Advances in robotics and artificial intelligence are increasingly enabling organizations to replace humans with intelligent machines and algorithms1. Forecasts predict that, in the coming years, these new technologies will affect millions of workers in a wide range of occupations, replacing human workers in numerous tasks2,3, but potentially also in whole occupations1,4,5. Despite the intense debate about these developments in economics, sociology and other social sciences, research has not examined how people react to the technological replacement of human labour. We begin to address this gap by examining the psychology of technological replacement. Our investigation reveals that people tend to prefer workers to be replaced by other human workers (versus robots); however, paradoxically, this preference reverses when people consider the prospect of their own job loss. We further demonstrate that this preference reversal occurs because being replaced by machines, robots or software (versus other humans) is associated with reduced self-threat. In contrast, being replaced by robots is associated with a greater perceived threat to one’s economic future. These findings suggest that technological replacement of human labour has unique psychological consequences that should be taken into account by policy measures (for example, appropriately tailoring support programmes for the unemployed).
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Data from all of the studies reported in this paper are publicly available at https://osf.io/8nfc5/.
Analyses were conducted with STATA 14.1 and with SPSS 23. No custom code was used. Code that supports the findings of this study is available from the corresponding author upon request.
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Supplementary Methods, Supplementary Results and Supplementary Tables 1–5.
Data for study 1a.
Data for study 1b.
Data for study 1c.
Data for study 2.
Data for study 3a.
Data for study 3b.
Data for study 4.
Data for study 5a.
Data for study 5b.
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Data for study 6.
Data for additional study examining the relationship between robotic (versus human) replacement, future economic concerns and skill obsolescence.
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Granulo, A., Fuchs, C. & Puntoni, S. Psychological reactions to human versus robotic job replacement. Nat Hum Behav 3, 1062–1069 (2019). https://doi.org/10.1038/s41562-019-0670-y
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