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Session-based item recommendation in e-commerce: on short-term intents, reminders, trends and discounts

机译:电子商务中基于会话的项目推荐:短期意图,提醒,趋势和折扣

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Many e-commerce sites present additional item recommendations to their visitors while they navigate the site, and ample evidence exists that such recommendations are valuable for both customers and providers. Academic research often focuses on the capability of recommender systems to help users discover items they presumably do not know yet and which match their long-term preference profiles. In reality, however, recommendations can be helpful for customers also for other reasons, for example, when they remind them of items they were recently interested in or when they point site visitors to items that are currently discounted. In this work, we first adopt a systematic statistical approach to analyze what makes recommendations effective in practice and then propose ways of operationalizing these insights into novel recommendation algorithms. Our data analysis is based on log data of a large e-commerce site. It shows that various factors should be considered in parallel when selecting items for recommendation, including their match with the customer’s shopping interests in the previous sessions, the general popularity of the items in the last few days, as well as information about discounts. Based on these analyses we propose a novel algorithm that combines a neighborhood-based scheme with a deep neural network to predict the relevance of items for a given shopping session.
机译:许多电子商务网站在访问者浏览网站时向他们提供其他项目建议,并且有充分的证据表明此类建议对客户和提供者都有价值。学术研究通常侧重于推荐系统的功能,以帮助用户发现他们大概还不知道的项目,并与他们的长期偏好特征相匹配。然而,实际上,推荐还可以由于其他原因而对客户有所帮助,例如,当他们提醒他们他们最近感兴趣的商品时,或者当他们将网站访问者指向当前打折的商品时。在这项工作中,我们首先采用系统的统计方法来分析使推荐在实践中有效的因素,然后提出将这些见解运用于新颖的推荐算法的方法。我们的数据分析是基于大型电子商务站点的日志数据。它表明,在选择要推荐的商品时,应同时考虑多种因素,包括与前几届顾客购物兴趣的匹配程度,最近几天该商品的普遍受欢迎程度以及折扣信息。基于这些分析,我们提出了一种新颖的算法,该算法将基于邻域的方案与深度神经网络相结合,以预测商品在给定购物时段中的相关性。

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