什么时候推荐系统最有效?产品属性和消费者评价对推荐人绩效的调节作用

Dokyun Lee, K. Hosanagar
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引用次数: 12

摘要

我们研究了产品属性和消费者评论对电子商务网站协同过滤推荐系统效能的调节作用。我们在北美一家顶级零售商的网站上进行了一项随机现场实验,该网站有184,375名用户,他们被分为推荐者组和对照组,数据集中有37,215种独特的产品。通过使用Amazon Mechanical Turk标记的产品属性和来自网站的消费者评论数据增强数据集,我们研究了它们对推荐人产生转换的调节作用。我们首先确认推荐的使用将基准转化率提高了5.9%。我们发现,推荐作为高平均评论评级的替代品,使用推荐的效果是将转化率提高约1.4个额外的平均星级评级。此外,我们发现享乐产品对转化率的积极影响大于功利产品,而搜索体验质量没有任何影响。我们还发现,价格越高,推荐人的积极影响越低,而更长的产品描述和更高的评论量增加了推荐人的有效性。结果中讨论了更多的发现。对于管理人员,我们1)确定推荐器工作良好的产品和产品属性,2)展示电子商务网站上其他产品信息源如何与推荐器交互。此外,从结果中获得的见解可以为新的推荐算法设计提供信息,这些算法可以意识到优点和缺点。从学术的角度来看,我们提供了关于推荐者如何导致消费者购买背后的潜在机制的见解。
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When do Recommender Systems Work the Best?: The Moderating Effects of Product Attributes and Consumer Reviews on Recommender Performance
We investigate the moderating effect of product attributes and consumer reviews on the efficacy of a collaborative filtering recommender system on an e-commerce site. We run a randomized field experiment on a top North American retailer's website with 184,375 users split into a recommender-treated group and a control group with 37,215 unique products in the dataset. By augmenting the dataset with Amazon Mechanical Turk tagged product attributes and consumer review data from the website, we study their moderating influence on recommenders in generating conversion. We first confirm that the use of recommenders increases the baseline conversion rate by 5.9%. We find that the recommenders act as substitutes for high average review ratings with the effect of using recommenders increasing the conversion rate as much as about 1.4 additional average star ratings. Additionally, we find that the positive impacts on conversion from recommenders are greater for hedonic products compared to utilitarian products while search-experience quality did not have any impact. We also find that the higher the price, the lower the positive impact of recommenders, while having lengthier product descriptions and higher review volumes increased the recommender's effectiveness. More findings are discussed in the Results. For managers, we 1) identify the products and product attributes for which the recommenders work well, 2) show how other product information sources on e-commerce sites interact with recommenders. Additionally, the insights from the results could inform novel recommender algorithm designs that are aware of strength and shortcomings. From an academic standpoint, we provide insight into the underlying mechanism behind how recommenders cause consumers to purchase.
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