The Algorithm Discount: Explaining Consumers’ Valuation of Human- versus Algorithm-Created Digital Products

Rix, Jennifer; Berger, Benedikt; Hess, Thomas; Rzepka, Christine


Abstract

Owing to advances in generative artificial intelligence (AI), machines can now create digital products like software applications or media content, evoking calls to label such products as “AI-made.” Research on the handmade effect and algorithm aversion suggests that consumers react negatively to digital products that have been created by generative AI systems instead of humans. It is unclear why consumers show this reaction, which we refer to as “algorithm discount.” To answer this question, we conducted a mixed-methods study in the context of digital news offerings, comprising 41 qualitative interviews and a choice-based conjoint analysis with 421 respondents. The results show that consumers’ beliefs about the love and effort imbued in the product, their curiosity about algorithmically generated products, and specific product characteristics, such as the type of news article, determine the algorithm discount. These findings extend our understanding of the emergence of consumers’ aversion to algorithm-created products and offer providers of such products insight into potential countermeasures.

Keywords
GenAI; generative AI; performative algorithms; algorithm-created products; digital products; digital news; algorithm discount; mixed-methods research



Publication type
Research article (journal)

Peer reviewed
Yes

Publication status
Published

Year
2025

Journal
Journal of Management Information Systems

Volume
42

Issue
2

Start page
633

End page
668

Language
English

ISSN
0742-1222

DOI

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