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Modeling User Music Preference Through Usage Scoring and User Listening Behavior for Generating Preferred Playlists

机译:通过使用情况评分和用户收听行为对用户音乐偏好进行建模,以生成首选播放列表

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Recommending the most appropriate music is one of the most studied fields in the context of Recommendation systems with the growing number of content available to users and consumers alike. As it is an important aspect in the use of multi-media systems and the music industry, it is important to note that the typical approach is through collaborative-filtering. In this paper, the study considered a more personalized view and examined to which degree a user's music preference can be modeled using information gathered from the user with respect to their listening behavior and music selected. The study proposes an approach to modeling a user's music preference using a series of usage scores obtained from a user's listening behavior and to generate a playlist derived from the obtained model. Using a novel data set, the proposed approach resulted to an average True-Positive rating of 54.43% in predicting music files that the user will select for the month given the previous month's data and an overall performance of 82.53% in producing entries to a preferred playlist, showing the possibility of more refinements and further study.
机译:在推荐系统中,推荐最合适的音乐是研究最多的领域之一,用户和消费者都可以使用越来越多的内容。由于这是使用多媒体系统和音乐行业的重要方面,因此必须注意,典型的方法是通过协作过滤。在本文中,这项研究考虑了更为个性化的观点,并研究了可以使用从用户那里收集的有关他们的收听行为和所选择音乐的信息,对用户的音乐偏好进行建模的程度。该研究提出了一种方法,该方法使用一系列从用户的收听行为获得的使用评分来对用户的音乐偏好进行建模,并生成从所获得的模型派生的播放列表。使用新颖的数据集,所提出的方法在预测用户将根据上个月的数据选择的月份中的音乐文件的预测中获得54.43%的平均“真实度”评级,在为首选项目生成条目方面的总体表现为82.53%播放列表,显示进一步完善和进一步研究的可能性。

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