互联网隐私
心理学
推荐系统
社会心理学
业务
万维网
计算机科学
作者
Yanyun Wang,Weizi Liu,Mike Yao
标识
DOI:10.1177/14614448231223517
摘要
Recommendation systems (RSs) leverage data and algorithms to generate a set of suggestions to reduce consumers’ efforts and assist their decisions. In this study, we examine how different framings of recommendations trigger people’s anthropomorphic perceptions of RSs and therefore affect users’ attitudes in an online experiment. Participants used and evaluated one of four versions of a web-based wine RS with different source framings (i.e. “recommendation by an algorithm,” “recommendation by an AI assistant,” “recommendation by knowledge generated from similar people,” no description). Results showed that different source framings generated different levels of perceived anthropomorphism. Participants indicated greater trust in the recommendations and greater confidence in making choices based on the recommendations when they perceived an RS as highly anthropomorphic; however, higher perceived anthropomorphism of an RS led to a lower willingness to disclose personal information to the RS.
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