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Research on Collaborative Filtering Recommendation Algorithm Based on Matrix Decomposition Method

机译:基于矩阵分解方法的协同过滤推荐算法研究

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In order to realize the personalized recommendation of internet mass data, according to the characteristics of internet mining data set and combined with mathematical algorithms, this paper proposes a new forecasting and computing model of adding the regularization constraint and least square method based on the traditional matrix decomposition model (SVD), improving the speed and accuracy of the proposed algorithm. Matrix decomposition before and after improvement carries out experiments and results analysis with filtering recommendation algorithm, the experimental results show that the speed and accuracy of two prediction score calculation methods have some promotion after adding the regularization constraint and the least squares. After joining the regular constraints, the RMSE values obtained by MATLAB will monotonic decrease, avoiding the over fitting phenomenon and improving the calculation quality.
机译:为了实现互联网群数据的个性化推荐,根据互联网挖掘数据集的特点和与数学算法组合,本文提出了一种基于传统矩阵添加正则化约束和最小二乘法的新预测和计算模型分解模型(SVD),提高所提出的算法的速度和准确性。改进前后的矩阵分解通过过滤推荐算法进行实验和结果分析,实验结果表明,两个预测得分计算方法的速度和准确性在添加正则化约束和最小二乘之后具有一些促销。加入常规约束后,Matlab获得的RMSE值将单调减少,避免过度拟合现象并提高计算质量。

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