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An item recommendation algorithm based on matrix decomposition and topic model

机译:基于矩阵分解和主题模型的项目推荐算法

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Traditional collaborative filtering models are often faced with sparse user data, and the relationship between users and items is not clear enough so that the accuracy of user-item rating prediction is still not high. According to the idea that LDA model can mine hidden information in user comments and Probability Matrix Decomposition model can alleviate user data sparse, this paper proposes IRCMT algorithm. Firstly, IRCMT algorithm using the LDA model for the user(item) - topic distribution, thus obtains the user (item) theme similarity. Secondly, the user(item) topic similarity can be incorporated into probability matrix decomposition, resulting in improved user (item) feature matrix, and predict refactoring score matrix, finally combining items-theme similarity to calculate for the final prediction score, Office Products dataset experiments show that the algorithm in terms of rating prediction accuracy is superior to most of the traditional recommendation algorithm and prove that users' comments have great research value.
机译:传统的协作过滤模型通常面临稀疏的用户数据,用户和项目之间的关系尚不清楚,以便用户项目额定预测的准确性仍然不高。根据LDA模型可以在用户评论和概率矩阵分解模型中挖掘隐藏信息的想法可以缓解用户数据稀疏,本文提出了IRCMT算法。首先,使用LDA模型的IRCMT算法用于用户(项目) - 主题分布,从而获取用户(项目)主题相似度。其次,用户(项目)主题相似度可以被包含在概率矩阵分解中,从而产生改进的用户(项)特征矩阵,并预测重构分数矩阵,最终将项目主题相似度与计算最终预测分数的计算,办公产品数据集实验表明,该算法在评级预测精度方面优于大多数传统推荐算法,并证明了用户的评论具有很大的研究价值。

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