Amy A. Winecoff, Florin Brasoveanu, Bryce Casavant, Pearce Washabaugh, Matthew Graham
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引用次数: 8
摘要
推荐系统(RS)通常利用物品特征之间的相似性信息来进行推荐。然而,许多常用的相似性函数做出数学假设,如对称性(即Sim(a, b) = Sim(b, a)),这与人类如何做出相似性判断不一致。此外,大多数算法验证要么不直接衡量用户的行为,要么不符合心理学研究的方法标准。不考虑用户心理的RS开发和评价可能无法满足用户需求。为了提供满足用户需求的建议,我们必须:1)开发考虑人类认知已知属性的相似函数,2)使用方法学上合理的用户测试严格评估这些函数的性能。在这里,我们开发了一个框架来评估用户对相似性的判断,这是由心理学研究方法的最佳实践所告知的。利用使用我们的框架收集的用户时尚产品相似度判断,我们证明了心理知情的相似度函数(即Tversky对比模型)在预测用户的相似度判断方面优于心理幼稚的相似度函数(即Jaccard相似度)。
Users in the loop: a psychologically-informed approach to similar item retrieval
Recommender systems (RS) often leverage information about the similarity between items' features to make recommendations. Yet, many commonly used similarity functions make mathematical assumptions such as symmetry (i.e., Sim(a, b) = Sim(b, a)) that are inconsistent with how humans make similarity judgments. Moreover, most algorithm validations either do not directly measure users' behavior or fail to comply with methodological standards for psychological research. RS that are developed and evaluated without regard to users' psychology may fail to meet users' needs. To provide recommendations that do meet the needs of users, we must: 1) develop similarity functions that account for known properties of human cognition, and 2) rigorously evaluate the performance of these functions using methodologically sound user testing. Here, we develop a framework for evaluating users' judgments of similarity that is informed by best practices in psychological research methods. Employing users' fashion item similarity judgments collected using our framework, we demonstrate that a psychologically-informed similarity function (i.e., Tversky contrast model) outperforms a psychologically-naive similarity function (i.e., Jaccard similarity) in predicting users' similarity judgments.