Bahg Giwon, Sloutsky Vladimir M, Turner Brandon M
Department of Psychology, Vanderbilt University.
Department of Psychology, Ohio State University.
J Exp Psychol Gen. 2025 Sep;154(9):2503-2522. doi: 10.1037/xge0001763. Epub 2025 Jun 23.
Personalization algorithms are widely used online to deliver recommendations fine-tuned to individual users. This specificity comes at the cost of the diversity of information presented to users, limiting exposure to alternative perspectives and potentially reinforcing existing beliefs. We investigated the degree to which personalization can hinder the acquisition of new knowledge of categories. We asked participants to learn about alien categories under different levels of personalization and tested their knowledge using a postlearning categorization task. Our results show that learners in personalized environments sample feature information more selectively during the learning phase and develop inaccurate representations about the categories. Critically, they also report inflated confidence about their inaccurate decisions for categories for which they had little exposure. Our results suggest that personalization can distort learners' understanding of the environment, bias information sampling, and induce incorrect generalization of knowledge. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
个性化算法在网络上被广泛应用,以提供根据个体用户进行微调的推荐。这种针对性是以向用户呈现的信息多样性为代价的,限制了对不同观点的接触,并有可能强化现有信念。我们研究了个性化在多大程度上会阻碍对类别新知识的获取。我们要求参与者在不同个性化水平下了解外星类别,并使用学习后的分类任务测试他们的知识。我们的结果表明,处于个性化环境中的学习者在学习阶段更有选择性地抽样特征信息,并对类别形成不准确的表征。至关重要的是,他们还对自己接触较少的类别的不准确决策表现出过高的信心。我们的结果表明,个性化会扭曲学习者对环境的理解,使信息抽样产生偏差,并导致知识的错误泛化。(PsycInfo数据库记录(c)2025美国心理学会,保留所有权利)