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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Collaborative filtering recommendation algorithm integrating time windows and rating predictions
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Collaborative filtering recommendation algorithm integrating time windows and rating predictions

机译:共同过滤推荐算法集成时间窗口和评级预测

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摘要

This paper describes a new collaborative filtering recommendation algorithm based on probability matrix factorization. The proposed algorithm decomposes the rating matrix into two nonnegative matrixes using a predictive rating model. After normalization processing, these two nonnegative matrixes provide useful probability semantics. The posterior distribution of the real part of the probability model is calculated by the variational inference method. Finally, the preferences for items that users have not rated can be predicted. The user-item rating matrix is supplemented by a preference prediction value, resulting in a dense rating matrix. Finally, time weighting is integrated into the rating matrix to construct the 3D user-item-time model, which gives the recommendation results. According to experiments using open Netflix, MovieLens, and Epinion datasets, the proposed algorithm is superior to several existing recommendation algorithms in terms of rating predictions and recommendation effects.
机译:本文介绍了一种基于概率矩阵分解的新的协同过滤推荐算法。所提出的算法使用预测评级模型将额定矩阵分解成两个非负矩阵。在归一化处理之后,这两个非负矩阵提供了有用的概率语义。通过变分推理方法计算概率模型的实部的后部分布。最后,可以预测用户尚未评级的项目的偏好。用户项评级矩阵由偏好预测值补充,导致密集的额定值矩阵。最后,将时间加权集成到额定值矩阵中以构建3D用户项时间模型,其给出了推荐结果。根据使用Open Netflix,MoviElens和换句话数据集的实验,所提出的算法在评级预测和推荐效果方面优于几个现有推荐算法。

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