Multidimensional Optimization Model of Music Recommender Systems

Kyong-Su Park, Nam-Me Moon
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引用次数: 4

Abstract

This study aims to identify the multidimensional variables and sub-variables and study their relative weight in music recommender systems when maximizing the rating function R. To undertake the task, a optimization formula and variables for a research model were derived from the review of prior works on recommender systems, which were then used to establish the research model for an empirical test. With the research model and the actual log data of real customers obtained from an on line music provider in Korea, multiple regression analysis was conducted to induce the optimal correlation of variables in the multidimensional model. The results showed that the correlation value against the rating function R for Items was highest, followed by Social Relations, Users and Contexts. Among sub-variables, popular music from Social Relations, genre, latest music and favourite artist from Items were high in the correlation with the rating function R. Meantime, the derived multidimensional recommender systems revealed that in a comparative analysis, it outperformed two dimensions(Users, Items) and three dimensions(Users, Items and Contexts, or Users, items and Social Relations) based recommender systems in terms of adjusted and the correlation of all variables against the values of the rating function R.
音乐推荐系统的多维优化模型
本研究旨在识别音乐推荐系统中的多维变量和子变量,并研究它们在评级函数r最大化时的相对权重。为了完成这项任务,我们在回顾前人关于推荐系统的研究成果的基础上,推导出研究模型的优化公式和变量,并利用这些优化公式和变量建立研究模型进行实证检验。利用研究模型和从韩国某在线音乐提供商获取的真实客户的实际日志数据,进行多元回归分析,得出多维模型中变量的最优相关性。结果表明,物品与评级函数R的相关值最高,其次是社会关系、用户和上下文。在子变量中,来自Social Relations的流行音乐、流派、最新音乐和来自Items的最喜欢的艺术家与评级函数r的相关性很高。同时,衍生的多维推荐系统显示,在比较分析中,它优于两个维度(用户,项目)和三个维度(用户,项目和上下文,或用户)。基于项目和社会关系)的推荐系统,根据评级函数R的值调整和所有变量的相关性。
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