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A MODEL-BASED COLLABORATIVE FILTERING METHOD FOR BOUNDED SUPPORT DATA

机译:一种基于模型的有界支持数据协同过滤方法

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Collaborative filtering (CF) is an important technique used in some recommendation systems.The task of CF is to estimate the persons' preferences (e.g.,ratings) or to predict the preferences for the future,based on some already known persons' preferences.In general,the model-based CF performs better than the memory-based CF,especially for highly sparse data.In this paper,we present a new model-based CF method for bounded support data,which takes into account the facts that the ratings are usually in a limited interval.A nonnegative matrix factorization (NMF) model is applied to investigate and learn the patterns hidden in the observed data matrix.Each rating value is assumed to be beta distributed and we assign the gamma prior to the parameters in a beta distribution for the purpose of Bayesian estimation.With variation inference framework and some lower bound approximations,an analytically tractable solution can be obtained for the proposed NMF model.By comparing with several existing low-rank matrix approximation methods,the good performance of the proposed method is demonstrated.
机译:协作过滤(CF)是某些推荐系统中使用的一项重要技术.CF的任务是基于一些已知人员的偏好来估计人员的偏好(例如评分)或预测未来的偏好。通常,基于模型的CF的性能要优于基于存储器的CF,特别是对于高度稀疏的数据。本文提出了一种新的基于模型的CF有限支持数据的方法,该方法考虑了评级为通常使用非负矩阵分解(NMF)模型来研究和学习隐藏在观察到的数据矩阵中的模式每个假设值均假定为beta分布,我们在beta参数之前分配伽玛以贝叶斯估计为目的的分布。借助变化推断框架和一些下界近似值,可以为所提出的NMF模型获得解析可处理的解决方案。低秩矩阵逼近方法,证明了该方法的良好性能。

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