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Reducing Recommender System Biases: An Investigation of Rating Display Designs1

机译:减少推荐系统的偏见:评级显示设计的调查1

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Prior research has shown that online recommendations have a significant influence on consumers' preference ratings and economic behavior. Specifically, biases induced by observing personalized system recommendations can lead to distortions in users' self-reported preference ratings after consumption of an item, thus contaminating the users' subsequent inputs to the recommender system. This, in turn, provides the system with an inaccurate view of user preferences and opens up possibilities of rating manipulation. As recommender systems continue to become increasingly popular in today's online environments, preventing or reducing such system-induced biases constitutes a highly important and practical research problem. In this paper, we address this problem via the analysis of different rating display designs for the purpose of proactively preventing biases before they occur (i.e., at rating collection time). We use randomized laboratory experimentation to test how the presentation format of personalized recommendations affects the biases generated in post-consumption preference ratings. We demonstrate that graphical rating display designs of recommender systems are more advantageous than numerical designs in reducing the biases, although none are able to remove biases completely. We also show that scale compatibility is a contributing mechanism operating to create these biases, although not the only one. Together, the results have practical implications for the design and implementation of recommender systems as well as theoretical implications for the study of recommendation biases.
机译:先前的研究表明,在线推荐对消费者的偏好等级和经济行为具有重大影响。具体而言,由于观察个性化系统推荐而引起的偏差会导致用户在消费某项商品后,其自我报告的偏好等级出现失真,从而污染了用户随后对推荐系统的输入。反过来,这为系统提供了用户偏好的不准确视图,并打开了评级操作的可能性。随着推荐器系统在当今的在线环境中继续变得越来越流行,防止或减少这种系统引起的偏差构成了非常重要和实际的研究问题。在本文中,我们通过分析不同的评级显示设计来解决此问题,目的是在偏差出现之前(即在评级收集时)主动防止偏差。我们使用随机实验室实验来测试个性化推荐的显示格式如何影响消费后偏好评分中产生的偏差。我们证明,推荐系统的图形评分显示设计在减少偏差方面比数字设计更具优势,尽管没有一个能够完全消除偏差。我们还表明,规模兼容性是造成这些偏差的一种起作用的机制,尽管不是唯一的一种。总之,这些结果对推荐系统的设计和实施具有实际意义,对推荐偏差的研究也具有理论意义。

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