基于属性值偏好方差分析的协同过滤算法

Xiaoyun Wang, Jintao Du
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引用次数: 5

摘要

协同过滤是个性化推荐系统中最先进、应用最广泛的方法。然而,由于稀疏性导致的精度问题长期存在。为了解决这一问题,我们开发了结合属性值偏好方差分析的协同过滤算法,进一步提高了推荐精度。我们的操作是基于新的用户-物品评级矩阵,该矩阵通过奇异值分解在维数上进行了降维。首先,将用户评分映射到相关的物品属性,建立属性-值偏好矩阵。提出了用户间相似度方差矩阵(VAP),结合其均值计算用户间相似度。因此,计算评级预测以生成目标用户的top-N项。实验表明,该方法可以提高协同过滤推荐的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Collaborative Filtering Algorithm Based on Variance Analysis of Attributes-Value Preference
Collaborative filtering is the state-of-the-art and widely applied method in personalized recommendation systems. However, the problem of precision resulting from sparsity exists chronically. To address the issue, we develop collaborative filtering algorithm that incorporates the variance analysis of attributes-value preference, which can improve recommending precision further. What we operate on is based on the new user-item rating matrix that has been reduced in dimensionality via Singular Value Decomposition. Firstly, user ratings can be mapped to relevant item attributes for establishing attributes-value preference (AP) matrix. Variance matrix of AP (VAP) is proposed to compute the similarity between users that incorporate with the mean of it. Thus, the rating prediction is calculated to generate the top-N items for target user. The experiment suggests that it can increase the precision of collaborative filtering recommendation.
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