感知
计算机科学
任务(项目管理)
创造力
产品(数学)
偏爱
可预测性
航程(航空)
结果(博弈论)
实证研究
人工智能
机器学习
心理学
数学
社会心理学
工程类
统计
数理经济学
航空航天工程
神经科学
系统工程
几何学
作者
Melanie Clegg,Reto Hofstetter,Emanuel de Bellis,Bernd H. Schmitt
摘要
Abstract Previous research has shown that consumers respond differently to decisions made by humans versus algorithms. Many tasks, however, are not performed by humans anymore but entirely by algorithms. In fact, consumers increasingly encounter algorithm-controlled products, such as robotic vacuum cleaners or smart refrigerators, which are steered by different types of algorithms. Building on insights from computer science and consumer research on algorithm perception, this research investigates how consumers respond to different types of algorithms within these products. This research compares high-adaptivity algorithms, which can learn and adapt, versus low-adaptivity algorithms, which are entirely pre-programmed, and explore their impact on consumers' product preferences. Six empirical studies show that, in general, consumers prefer products with high-adaptivity algorithms. However, this preference depends on the desired level of product outcome range—the number of solutions a product is expected to provide within a task or across tasks. The findings also demonstrate that perceived algorithm creativity and predictability drive the observed effects. This research highlights the distinctive role of algorithm types in the perception of consumer goods and reveals the consequences of unveiling the mind of the machine to consumers.
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