心理学
启发式
内群和外群
可靠性
社会心理学
价(化学)
身份(音乐)
社会认同理论
认知
推荐系统
在线身份
专家意见
外群
社会团体
计算机科学
互联网
情报检索
万维网
认识论
医学
物理
量子力学
声学
重症监护医学
哲学
神经科学
操作系统
作者
Jinping Wang,María D. Molina,S. Shyam Sundar
标识
DOI:10.1016/j.chb.2020.106278
摘要
Whom do we trust more, the recommendation of an expert or public opinion from a crowd of other users of the site? Does it matter if the expert belongs to our in-group? And, what, if anything, would change if an Artificial Intelligence (AI) system was the recommender rather than a human expert? In order to answer these research questions, we conducted a between-subjects online experiment, informed by MAIN Model (Sundar, 2008), which posits that interface cues signaling different types of sources can influence perceived credibility of content by triggering distinct cognitive heuristics. Participants were assigned to a scenario wherein the expert review contrasted the peer rating about recommending photos for business profiles, with systematic variations in expert review valence (negative vs. positive), expert identity (ingroup vs. outgroup vs. no identity), and agent type (human vs. AI). Results show that positive ratings are more influential on user judgements. However, for negative ratings, human ingroup members generated greater effects than no-identity experts. Moreover, AI systems were as influential as human experts, suggesting the potential for AI to substitute human experts for online recommendations.
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