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Recommending Music Based on Probabilistic Latent Semantic Analysis on Korean Radio Episodes

机译:基于韩国广播剧情概率概率语义分析的音乐推荐

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Recommending music that satisfies the user's taste has been a challenging problem. Previous works on music recommendation system focused on the user's purchase history or the content of the music. In this paper, we propose a music recommendation system purely based on analyzing textual input of the users. We first mine a large corpus of Korean radio episodes, which is written by the listener. Each episode is composed of a personal story and a song request which we assume to be somehow related to the story. We then performing probabilistic Latent Semantic Analysis (pLSA) to find similar documents and recommend music that are associated to those documents. We evaluate our system by computing the mean reciprocal rank and mean average precision, which are both conventional metrics in evaluating information retrieval systems. The result shows that music similarity and document similarity are closely correlated, and thus it is possible to recommend music purely based on text analysis.
机译:推荐满足用户品味的音乐一直是一个具有挑战性的问题。关于音乐推荐系统的先前作品集中于用户的购买历史或音乐的内容。在本文中,我们提出了一种纯粹基于分析用户文本输入的音乐推荐系统。我们首先挖掘由听众编写的大量韩国广播剧集。每个情节都包含一个个人故事和一个歌曲请求,我们认为这与该故事有某种联系。然后,我们执行概率潜在语义分析(pLSA)以查找相似的文档并推荐与那些文档相关的音乐。我们通过计算均值倒数排名和均值平均精度来评估我们的系统,这是评估信息检索系统中的常规指标。结果表明,音乐相似度和文档相似度紧密相关,因此有可能纯粹基于文本分析来推荐音乐。

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