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Music emotion classification and context-based music recommendation

机译:音乐情感分类和基于上下文的音乐推荐

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Context-based music recommendation is one of rapidly emerging applications in the advent of ubiquitous era and requires multidisciplinary efforts including low level feature extraction and music classification, human emotion description and prediction, ontology-based representation and recommendation, and the establishment of connections among them. In this paper, we contributed in three distinctive ways to take into account the idea of context awareness in the music recommendation field. Firstly, we propose a novel emotion state transition model (ESTM) to model human emotional states and their transitions by music. ESTM acts like a bridge between user situation information along with his/her emotion and low-level music features. With ESTM, we can recommend the most appropriate music to the user for transiting to the desired emotional state. Secondly, we present context-based music recommendation (COMUS) ontology for modeling user's musical preferences and context, and for supporting reasoning about the user's desired emotion and preferences. The COMUS is music-dedicated ontology in OWL constructed by incorporating domain-specific classes for music recommendation into the Music Ontology, which includes situation, mood, and musical features. Thirdly, for mapping low-level features to ESTM, we collected various high-dimensional music feature data and applied nonnegative matrix factorization (NMF) for their dimension reduction. We also used support vector machine (SVM) as emotional state transition classifier. We constructed a prototype music recommendation system based on these features and carried out various experiments to measure its performance. We report some of the experimental results.
机译:基于上下文的音乐推荐是无处不在时代到来的快速兴起的应用之一,需要多学科的努力,包括低级特征提取和音乐分类,人类情感描述和预测,基于本体的表示和推荐以及它们之间的连接建立。在本文中,我们以三种独特的方式做出了贡献,以考虑音乐推荐领域中上下文感知的概念。首先,我们提出了一种新颖的情绪状态转换模型(ESTM),以音乐模拟人类情绪状态及其转换。 ESTM就像用户情况信息及其情感和低级音乐功能之间的桥梁。借助ESTM,我们可以向用户推荐最合适的音乐,以便转变为所需的情感状态。其次,我们提出了基于上下文的音乐推荐(COMUS)本体,用于建模用户的音乐喜好和上下文,并支持有关用户所需的情绪和喜好的推理。 COMUS是OWL中专用于音乐的本体,它是通过将针对特定领域的音乐推荐类并入Music Ontology中而构建的,其中包括情境,情绪和音乐特征。第三,为了将低级特征映射到ESTM,我们收集了各种高维音乐特征数据,并应用了非负矩阵分解(NMF)进行了降维。我们还使用支持向量机(SVM)作为情绪状态转换分类器。我们基于这些功能构建了原型音乐推荐系统,并进行了各种实验以评估其性能。我们报告了一些实验结果。

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