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Modeling Users Preference Dynamics and Side Information in Recommender Systems

机译:推荐系统中的用户偏好动态和辅助信息建模

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In recommender systems user preferences can be fairly dynamic, as users tend to exploit a wide range of items and modify their tastes accordingly over time. In this paper, we model user-item interactions over time using a tensor that has time as a dimension (mode). To account for the fact that user preferences change individually, we propose a new measure of user-preference dynamics (UPD) that captures the rate with which the current preferences of each user have been shifted. UPD shows the variability in how users interact with items in recommender systems. We generate recommendations based on a tensor factorization technique, where the importance of past user preferences are weighted according to their UPD values, that is, higher UPD values downweigh more past user preferences. Additionally, we exploit users’ side data, such as demographics, which improve the accuracy of recommendations based on a coupled tensor-matrix factorization scheme. Our empirical evaluation uses two real benchmark datasets from the social media platforms Last.fm and MovieLens, containing users’ history records pertaining to listening to songs and viewing movies, respectively. We demonstrate that in both datasets, there are users with a varying level of dynamics, expressed by the UPD metric. Our experimental results show that the proposed method outperforms several baselines, by taking into account both dynamics and side data of users.
机译:在推荐系统中,用户的偏好可能是相当动态的,因为用户往往会使用多种商品并随着时间的流逝相应地修改自己的口味。在本文中,我们使用具有时间作为维度(模式)的张量来建模用户与项目之间的交互。要考虑到用户偏好会逐个改变的事实,我们提出了一种新的用户偏好动态度量(UPD),以反映每个用户当前偏好发生变化的速率。 UPD显示了用户与推荐系统中项目交互方式的可变性。我们基于张量分解技术生成建议,其中根据用户的UPD值对过去用户首选项的重要性进行加权,也就是说,较高的UPD值将抵消更多的过去用户首选项。此外,我们利用用户的辅助数据(例如人口统计数据),基于耦合的张量矩阵分解方案提高了建议的准确性。我们的经验评估使用了来自社交媒体平台Last.fm和MovieLens的两个真实基准数据集,分别包含了用户的听歌和看电影的历史记录。我们证明,在这两个数据集中,都有由UPD指标表示的具有不同动态级别的用户。我们的实验结果表明,通过同时考虑用户的动态性和辅助数据,所提出的方法优于几个基准。

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