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Modeling Dynamic Missingness of Implicit Feedback for Recommendation

机译:推荐隐式反馈的动态缺失建模

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摘要

Implicit feedback is widely used in collaborative filtering methods for recommendation. It is well known that implicit feedback contains a large number of values that are missing not at random (MNAR); and the missing data is a mixture of negative and unknown feedback, making it difficult to learn users’ negative preferences. Recent studies modeled exposure, a latent missingness variable which indicates whether an item is exposed to a user, to give each missing entry a confidence of being negative feedback. However, these studies use static models and ignore the information in temporal dependencies among items, which seems to be an essential underlying factor to subsequent missingness. To model and exploit the dynamics of missingness, we propose a latent variable named “user intent” to govern the temporal changes of item missingness, and a hidden Markov model to represent such a process. The resulting framework captures the dynamic item missingness and incorporate it into matrix factorization (MF) for recommendation. We also explore two types of constraints to achieve a more compact and interpretable representation of user intents. Experiments on real-world datasets demonstrate the superiority of our method against state-of-the-art recommender systems.
机译:隐式反馈被广泛用于协作过滤方法中以进行推荐。众所周知,隐式反馈包含大量不随机丢失的值(MNAR)。而且缺少的数据混合了负面反馈和未知反馈,因此很难了解用户的负面偏好。最近的研究对暴露模型进行了建模,它是一个潜在的缺失变量,该变量指示某项是否暴露给用户,从而使每个缺失的条目都具有负面反馈的可信度。但是,这些研究使用静态模型,并且忽略了项目之间时间相关性方面的信息,这似乎是导致后续缺失的根本原因。为了建模和利用缺失的动态,我们提出了一个名为“用户意图”的潜在变量来控制项目缺失的时间变化,并提出了一个隐马尔可夫模型来表示这种过程。结果框架捕获了动态项目缺失,并将其合并到矩阵分解(MF)中以进行推荐。我们还将探讨两种类型的约束,以实现用户意图的更紧凑和可解释的表示。在真实数据集上进行的实验证明了我们的方法相对于最新推荐系统的优越性。

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