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Averse to what: Consumer aversion to algorithmic labels, but not their outputs?

Interdisciplinary Studies

Averse to what: Consumer aversion to algorithmic labels, but not their outputs?

S. Mariadassou, A. Klesse, et al.

This research was conducted by Shwetha Mariadassou, Anne-Kathrin Klesse, and Johannes Boegershausen and reveals a third possibility: people may be averse to AI labels yet appreciative of algorithmic output. The authors call for careful labeling, broader study of real interactions with tools, and attention to technical configuration to better explain public reactions to AI.... show more
Abstract
Inspired by significant technical advancements, a rapidly growing stream of research explores human lay beliefs and reactions surrounding AI tools, which employ algorithms to mimic elements of human intelligence. This literature predominantly documents negative reactions to these tools or the underlying algorithms, often referred to as algorithm aversion or, alternatively, a preference for humans. This article proposes a third interpretation: people may be averse to their labels, but appreciative of their output. This perspective offers three core insights for how we study people's reactions to algorithms. Research would benefit from (1) carefully considering the labeling of AI tools, (2) broadening the scope of study to include interactions with these tools, and (3) accounting for their technical configuration.
Publisher
Current Opinion in Psychology
Published On
Aug 01, 2024
Authors
Shwetha Mariadassou, Anne-Kathrin Klesse, Johannes Boegershausen
Tags
algorithm aversion
labeling effects
human-AI interaction
technical configuration
lay beliefs about AI
algorithm appreciation
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