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Music Recommendation Based on Acoustic Features and User Access Patterns

机译:基于声学特征和用户访问模式的音乐推荐

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摘要

Music recommendation is receiving increasing attention as the music industry develops venues to deliver music over the Internet. The goal of music recommendation is to present users lists of songs that they are likely to enjoy. Collaborative-filtering and content-based recommendations are two widely used approaches that have been proposed for music recommendation. However, both approaches have their own disadvantages: collaborative-filtering methods need a large collection of user history data and content-based methods lack the ability of understanding the interests and preferences of users. To overcome these limitations, this paper presents a novel dynamic music similarity measurement strategy that utilizes both content features and user access patterns. The seamless integration of them significantly improves the music similarity measurement accuracy and performance. Based on this strategy, recommended songs are obtained by a means of label propagation over a graph representing music similarity. Experimental results on a real data set collected from http://www.newwisdom.net demonstrate the effectiveness of the proposed approach.
机译:随着音乐行业开发场所来通过Internet传递音乐,音乐推荐越来越受到关注。音乐推荐的目的是向用户显示他们可能喜欢的歌曲列表。协作过滤和基于内容的推荐是为音乐推荐而提出的两种广泛使用的方法。但是,这两种方法都有其自身的缺点:协作筛选方法需要大量用户历史数据的收集,而基于内容的方法缺乏理解用户兴趣和偏好的能力。为了克服这些限制,本文提出了一种新颖的动态音乐相似度测量策略,该策略利用了内容特征和用户访问模式。它们的无缝集成极大地提高了音乐相似度的测量准确性和性能。基于此策略,通过在代表音乐相似性的图表上传播标签来获得推荐歌曲。从http://www.newwisdom.net收集的真实数据集的实验结果证明了该方法的有效性。

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