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Re-Ranking Recommendations Based on Predicted Short-Term Interests - A Protocol and First Experiment

机译:根据预测的短期利益重新排名建议 - 协议和第一次实验

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The recommendation of additional shopping items that are potentially interesting for the customer has become a standard feature of modern online stores. In academia, research on recommender systems (RS) is mostly centered around approaches that rely on explicit item ratings and long-term user profiles. In practical environments, however, such rating information is often very sparse and for a large fraction of the users very little is known about their preferences. Furthermore, in particular when the shop offers products from a variety of categories, the decision of what should be recommended can strongly depend on the user's current short-term interests and the navigational context. In this paper, we report the results of an initial experimental analysis evaluating the predictive accuracy of different con-textualized and non-contextualized recommendation strategies and discuss the question of appropriate experimental designs for such types of evaluations. To that purpose, we introduce a parameterizable protocol that supports session-specific accuracy measurements. Our analysis, which was based on log data obtained from a large online retailer for clothing and lifestyle products, shows that even a comparably simple contextual post-processing approach based on product features can leverage short-term user interests to increase the accuracy of the recommendations.
机译:额外的购物项目的建议可能有趣的客户已成为现代在线商店的标准功能。在学术界,关于推荐系统(RS)的研究大多是依赖于明确项目评级和长期用户配置文件的方法。然而,在实际环境中,这种评级信息通常非常稀疏,并且对于他们的偏好而言,用户的大部分非常少。此外,特别是当商店提供各种类别的产品时,应该建议的决定能够强烈取决于用户当前的短期利益和导航环境。在本文中,我们报告了初步实验分析的结果,评估了不同封闭式和非环境化建议策略的预测准确性,并讨论了这种类型的评估类型的适当实验设计问题。为此目的,我们介绍了一种支持特定于会话的精度测量的可参数化协议。我们的分析,基于从大型在线零售商获得的服装和生活方式产品获得的日志数据,表明即使是基于产品特征的相对简单的上下文后处理方法也可以利用短期用户兴趣来提高建议的准确性。

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