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Recommender systems based on quantitative implicit customer feedback

机译:基于定量隐式客户反馈的推荐系统

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Due to the abundant variety of products offered by e-commerce companies and online service providers, recommender systems become an increasingly important decision aid for customers. In this paper we focus on quantitative implicit customer feedback like sales and play records data. We extend the current state-of-the-art method for recommendations based on matrix factorization under a normal distribution assumption by allowing for different distributions which are more suitable to model this kind of data. In particular, we use the Poisson, the inverse Gaussian and the gamma distribution as extensions. The experimental evaluation with three real-world data sets shows the improved performance of our approach and we demonstrate the merit of using various distributions depending on the respective data set.
机译:由于电子商务公司和在线服务提供商提供的产品种类繁多,推荐系统已成为对客户越来越重要的决策辅助工具。在本文中,我们专注于定量的隐式客户反馈,例如销售和播放记录数据。通过允许更适合对此类数据建模的不同分布,我们在正态分布假设下扩展了基于矩阵分解的建议的最新技术。特别地,我们使用泊松,高斯逆和伽玛分布作为扩展。使用三个真实数据集进行的实验评估显示了我们方法的改进性能,并且我们展示了根据各个数据集使用各种分布的优点。

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