Serendipity如何通过推荐提高用户满意度?大规模用户评估

Li Chen, Y. Yang, Ningxia Wang, Keping Yang, Quan Yuan
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引用次数: 77

摘要

人们越来越认识到,在消除传统推荐系统的“过滤泡沫”现象方面,推荐的偶然性与其他超越准确性的目标(如新颖性和多样性)同样重要。然而,很少有实证研究证实意外发现对提高用户满意度和行为意愿的影响。在本文中,我们报告了在工业移动电子商务环境中进行的大规模用户调查(涉及3000多名用户)的结果。该研究确定了新颖性、意外性、相关性和及时性与意外发现之间的重要因果关系,以及意外发现与用户满意度和购买意愿之间的因果关系。此外,我们的研究结果表明,用户的好奇心在加强从新奇到意外发现和从意外发现到满足的关系中起着调节作用。我们的第三个贡献在于几种推荐算法的比较,这表明在用户感知方面,面向偶然性的算法比面向相关性和新颖性的方法有显著的改进。我们最后讨论了这个实验的意义,包括开发一个更精确的度量推荐意外发现的可行性,以及基于好奇心的个性化推荐系统意外发现策略的潜在好处。
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How Serendipity Improves User Satisfaction with Recommendations? A Large-Scale User Evaluation
Recommendation serendipity is being increasingly recognized as being equally important as the other beyond-accuracy objectives (such as novelty and diversity), in eliminating the “filter bubble” phenomenon of the traditional recommender systems. However, little work has empirically verified the effects of serendipity on increasing user satisfaction and behavioral intention. In this paper, we report the results of a large-scale user survey (involving over 3,000 users) conducted in an industrial mobile e-commerce setting. The study has identified the significant causal relationships from novelty, unexpectedness, relevance, and timeliness to serendipity, and from serendipity to user satisfaction and purchase intention. Moreover, our findings reveal that user curiosity plays a moderating role in strengthening the relationships from novelty to serendipity and from serendipity to satisfaction. Our third contribution lies in the comparison of several recommender algorithms, which demonstrates the significant improvements of the serendipity-oriented algorithm over the relevance- and novelty-oriented approaches in terms of user perceptions. We finally discuss the implications of this experiment, which include the feasibility of developing a more precise metric for measuring recommendation serendipity, and the potential benefit of a curiosity-based personalized serendipity strategy for recommender systems.
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