Addressing the cold user problem for model-based recommender systems

Tomas Geurts, F. Frasincar
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引用次数: 2

Abstract

Customers of a webshop are often presented large assortments, which can lead to customers struggling finding their desired product(s), an issue known as choice overload. In order to overcome this issue, recommender systems are used in webshops to provide personalized product recommendations to customers. Though, recommender systems using matrix factorization are not able to provide recommendations to new customers (i.e., cold users). To facilitate recommendations to cold users we investigate multiple active learning strategies, and subsequently evaluate which active learning strategy is able to optimally elicit the preferences from the cold users. Our model is empirically validated using a dataset from the webshop of de Bijenkorf, a Dutch department store. We find that the overall best-performing active learning strategy is PopGini, an active learning strategy which combines the popularity of an item with its Gini impurity score.
解决基于模型的推荐系统的冷用户问题
网上商店的顾客经常会看到大量的分类,这可能会导致顾客很难找到他们想要的产品,这个问题被称为选择过载。为了克服这个问题,在网上商店中使用推荐系统向客户提供个性化的产品推荐。然而,使用矩阵分解的推荐系统无法向新客户(即冷用户)提供推荐。为了便于向冷用户推荐,我们研究了多种主动学习策略,并随后评估了哪种主动学习策略能够最优地引起冷用户的偏好。我们的模型使用来自荷兰百货公司de Bijenkorf网店的数据集进行了实证验证。我们发现,总体上表现最好的主动学习策略是PopGini,这是一种将项目的受欢迎程度与其基尼杂质分数相结合的主动学习策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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