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Music playlist prediction via detecting song moods

机译:通过检测歌曲心情来预测音乐播放列表

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Modern internet technologies make people easily access millions of songs. However it also forms a huge barrier between customers and those songs people truely want, due to the difficulty to explore this large collections. In this paper, we propose a novel music playlist prediction algorithm to facilitate this process for users. This method captures the moods expressed by songs in playlist context and also models the nature of composing a playlist. With the help of captured moods, personalized predictions can be achieved. We offer two ways to represent these hidden song moods and the transitions between them. The empirical evaluations show that our method outperforms other state-of-the-art methods in terms of perplexity.
机译:现代互联网技术使人们可以轻松访问数百万首歌曲。但是,由于难以探索大量唱片,这在顾客和人们真正想要的那些歌曲之间也形成了巨大的障碍。在本文中,我们提出了一种新颖的音乐播放列表预测算法,以方便用户进行此过程。该方法捕获了播放列表上下文中歌曲表达的情绪,并且还对构成播放列表的性质进行了建模。借助捕获的心情,可以实现个性化的预测。我们提供了两种方法来表示这些隐藏的歌曲情绪以及它们之间的过渡。经验评估表明,在困惑方面,我们的方法优于其他最新方法。

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