Author
Listed:
- Anjan Pal
- Alton Y. K. Chua
- Snehasish Banerjee
Abstract
Drawing on the theory of planned behaviour and the risk-taking theory, the objective of this research is to investigate how attitude toward algorithms, attitude toward humans, and willingness to take risks affect user intention to follow in the situation where recommendations from algorithms and human experts contradict. Set in the context of investment decision-making, a 2 (attitude toward algorithms: algorithm aversion vs. algorithm appreciation) x 2 (attitude toward human experts: unfavourable vs. favourable) x 2 (willingness to take risks: low vs. high) quasi-experiment was conducted online (N = 804) where contradictory recommendations were presented from algorithms and human sources. Favourable attitudes toward algorithms and human experts promoted the intention to follow algorithm-generated and human-generated recommendations, respectively. A high willingness to take risks increased the intention to follow regardless of the source of the recommendations. Moreover, willingness to take risks moderated the relationship between attitude toward algorithms and the intention to follow the algorithm-generated recommendation as well as that between attitude toward humans and the intention to follow the human-generated recommendation. While the literature has shed light on how individuals evaluate recommendations from algorithms and humans separately, this is one of the earliest efforts to study the situation where algorithms contradict humans.
Suggested Citation
Anjan Pal & Alton Y. K. Chua & Snehasish Banerjee, 2026.
"When algorithms and human experts contradict, whom do users follow?,"
Behaviour and Information Technology, Taylor & Francis Journals, vol. 45(4), pages 646-659, February.
Handle:
RePEc:taf:tbitxx:v:45:y:2026:i:4:p:646-659
DOI: 10.1080/0144929X.2025.2525306
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