基于混合协同过滤技术的个性化音乐推荐算法

Wang Wenzhen
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引用次数: 6

摘要

随着音乐资源的不断增长,为用户推荐合适的音乐已经成为一个研究热点。本文将关联规则和音乐基因加入到音乐协同过滤个性化推荐系统中,建立混合推荐模型。描述了模型的结构,详细描述了个性化推荐的推荐过程和推荐算法。该算法通过分析用户对不同音乐基因特征的兴趣和偏好,综合分析用户行为,并利用不同用户之间的兴趣相似性构建用户之间的邻域关系。结合两个因素对推荐算法进行验证,获得了预期的推荐结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized Music Recommendation Algorithm Based on Hybrid Collaborative Filtering Technology
With the continuous growth of music resources, the problem of recommending suitable music for users has become a research hotspot. In this paper, association rules and music genes are added to music collaborative filtering personalized recommendation system to establish a hybrid recommendation model. The structure of the model is described and the recommendation process and recommendation algorithm of personalized recommendation are described in detail. By analyzing users' interests and preferences for different music gene features, the algorithm comprehensively analyses users' behavior, and uses the similarity of interests among different users to construct the neighborhood relationship among them. The recommendation algorithm is validated by combining two factors, and the expected recommendation results are achieved.
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