基于用户特征和信任的CF推荐算法优化

Q. Jin, Xia Song, Ming-Hua Yang, Wu Cai
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引用次数: 3

摘要

协同过滤算法在个性化推荐中应用最为广泛和成功。然而,由于其对用户历史数据的过度依赖,难以避免数据稀疏和冷启动问题。数据稀疏性和冷启动可能导致协同过滤算法推荐精度较差。提出了一种基于用户特征和信任的混合最优协同过滤算法。在用户相似度计算过程中,引入用户特征的年龄和性别,使得最近邻的确定更加准确。此外,为了提高传统CF推荐算法的推荐精度,通过度量用户的信任程度,将信任关系引入到预测分数中,并将这种改进用于新项目的推荐,以提高传统CF推荐算法的推荐精度。电影镜头数据集的实验结果表明,该算法可以提高推荐系统的推荐精度。同时,还能有效地解决冷启动和稀疏数据等问题。
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Optimized CF Recommendation Algorithm Based on Users' Characteristics and Trust
CF (Collaborative filtering) algorithm has the widest and most successful applications in personalized recommendations. However, due to its over-reliance on the users' historical data, it is difficult to avoid data sparseness and cold start issues. The data sparseness and cold start may cause poor recommendation accuracy of the collaborative filtering algorithm. A hybrid optimal collaborative filtering algorithm based on users' characteristics and trust is proposed in this paper. In the process of users' similarity calculation, the age and gender of users' characteristics are introduced to make the determination of nearest neighbor more accurate. Besides, in order to improve the recommendation accuracy of the traditional CF recommendation algorithm, the trust relationship is introduced into the prediction score by measuring the users' trust, and this improvement will be used in the recommendation of new items in order to improve the recommendation accuracy of the traditional CF recommendation algorithm. The experimental results of Movie lens data set show that the improved recommendation accuracy of the recommendation system can be achieved by the proposed algorithm. Also, the problems of cold start and sparse data can be solved effectively.
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