协同过滤
推荐系统
启发式
个性化
计算机科学
背景(考古学)
产品(数学)
认知需要
启发式
情报检索
质量(理念)
认知
广告
心理学
电子商务
万维网
人工智能
数学
业务
操作系统
认识论
哲学
古生物学
神经科学
生物
几何学
作者
Mengqi Liao,S. Shyam Sundar
标识
DOI:10.1080/00913367.2021.1887013
摘要
In the e-commerce context, are we persuaded more by a product recommendation that matches our preferences (content filtering) or by one that is endorsed by others like us (collaborative filtering)? We addressed this question by conceptualizing these two filtering types as cues that trigger cognitive heuristics (mental shortcuts), following the heuristic-systematic model in social psychology. In addition, we investigated whether the degree to which the recommendation matches user preferences (or other users’ endorsements) provides an argument for systematic processing, especially for those who need deeper insights into the accuracy of the algorithm, particularly in product categories where quality is subjective. Data from a 2 (algorithm type: content vs. collaborative filtering) x 3 (percentage match: low vs. medium vs. high) x 2 (product category: search vs. experience) + 2 (control: search and experience) between-subjects experiment (N = 469) reveal that for experience products, consumers prefer content-based filtering with higher percentage matches, because it is perceived as offering more transparency. This is especially true for individuals with high need for cognition. For search products, however, collaborative filtering leads to more positive evaluations by triggering the “bandwagon effect.” These findings have implications for theory pertaining to the use of artificial intelligence in strategic communications and design of algorithms for e-commerce recommender systems.
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