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Cross-Domain Collaborative Filtering over Time

机译:跨域跨域协同过滤

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摘要

Collaborative filtering (CF) techniques recommend items to users based on their historical ratings. In real-world scenarios, user interests may drift over time since they are affected by moods, contexts, and pop culture trends. This leads to the fact that a user's historical ratings comprise many aspects of user interests spanning a long time period. However, at a certain time slice, one user's interest may only focus on one or a couple of aspects. Thus, CF techniques based on the entire historical ratings may recommend inappropriate items. In this paper, we consider modeling user-interest drift over time based on the assumption that each user has multiple counterparts over temporal domains and successive counterparts are closely related. We adopt the cross-domain CF framework to share the static group-level rating matrix across temporal domains, and let user-interest distribution over item groups drift slightly between successive temporal domains. The derived method is based on a Bayesian latent factor model which can be inferred using Gibbs sampling. Our experimental results show that our method can achieve state-of-the-art recommendation performance as well as explicitly track and visualize user-interest drift over time.
机译:协作过滤(CF)技术根据用户的历史评分向他们推荐商品。在现实世界中,用户的兴趣可能会随着时间的流逝而变化,因为它们会受到心情,环境和流行文化趋势的影响。这导致这样一个事实,即用户的历史评分包括跨长时间段的用户兴趣的许多方面。但是,在某个时间片上,一个用户的兴趣可能只集中在一个或几个方面。因此,基于整个历史评级的CF技术可能会推荐不适当的项目。在本文中,我们考虑基于每个用户在时域上具有多个对应项且连续的对应项紧密相关的假设,对随时间推移的用户兴趣漂移进行建模。我们采用跨域CF框架在时域之间共享静态的组级别评分矩阵,并让用户兴趣在项目组上的分布在连续的时域之间略微漂移。派生的方法基于贝叶斯潜在因子模型,可以使用Gibbs采样进行推断。我们的实验结果表明,我们的方法可以达到最先进的推荐性能,并且可以随着时间的推移明确跟踪和可视化用户兴趣漂移。

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