利用用户偏好类型和奇异值分解改进协同过滤中的缺失值输入

Wanapol Insuwan, U. Suksawatchon, J. Suksawatchon
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引用次数: 8

摘要

协同过滤的一个主要问题是对数据稀疏性的敏感。换句话说,当客户对少数产品或服务进行评价时,就会出现缺失值,从而导致推荐的准确性降低。虽然聚类质心和奇异值分解能够解决稀疏性问题,但它们的缺点是:1)估算平均值不是根据用户偏好得出的;2)估算平均值来自平均值,不能反映真实分布。为此,我们提出了“SVDUPMedianCF”,利用K-means算法得到的每一个客户的聚类质心,结合协同滤波中的奇异值分解(SVD),来填充每一个客户的缺失值,从而解决传统方法存在的补全缺失值的缺陷。基于MovieLens数据集进行5倍交叉验证的实验评估发现,与传统方法相比,所提模型的缺失值输入平均绝对误差最低。从实验结果来看,本文提出的模型能够显著提高推荐结果的质量(p<;0.05)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving missing values imputation in collaborative filtering with user-preference genre and singular value decomposition
One of the major concerns in collaborative filtering is sensitive to data sparsity. The other word, missing values are occurred when the customers rate to a few products or services, which bring about to less accuracy of the recommendation. Although the centroid of cluster and SVD are able to solve Sparsity problem, their drawbacks are 1) imputed mean is not derived from user preference and 2) imputed mean does not reflect to the real distribution since imputed mean comes from the average. Therefore, we propose “SVDUPMedianCF” in order to solve the defect of the traditional approach which is an imputation missing value by filling the missing values for each customer with the cluster centroid, obtained from K-means algorithm, of such customer along with singular value decomposition (SVD) in collaborative filtering. According to the experimental evaluation based on MovieLens dataset by using 5-fold cross validation, it has found that imputing missing values with the proposed model presents the lowest mean absolute error when comparison with traditional approach significantly. From the experimental result, the proposed model can improve the quality of recommendation results with significant difference (p<;0.05).
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