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Emotion-based music recommendation using audio features and user playlist

机译:使用音频功能和用户播放列表的基于情感的音乐推荐

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In this paper we utilize a dimensional emotion representation named Resonance-Arousal-Valence to express music emotion and inverse exponential function to represent emotion decay process. The relationship between acoustic features and their emotional impact reflection based on this representation has been well constructed. As music well expresses feelings, through the users' historical playlist in a session, we utilize the Conditional Random Fields to compute the probabilities of different emotion states, choosing the largest as the predicted user's emotion state. In order to recommend music based on the predicted user's emotion, we choose the optimized ranked music list that has the highest emotional similarities to the music invoking the predicted emotion state in the playlist for recommendation. We utilize our minimization iteration algorithm to assemble the optimized ranked recommended music list. The experiment results show that the proposed emotion-based music recommendation paradigm is effective to track the user's emotions and recommend music fitting his emotional state.
机译:在本文中,我们利用名为Resonance-Arousal-Valence的三维情感表示来表达音乐情感,并使用反指数函数来表示情感衰减过程。基于此表示,声学特征与其情感影响反射之间的关系已得到很好的构建。当音乐很好地表达情感时,通过会话中用户的历史播放列表,我们利用条件随机场来计算不同情绪状态的概率,选择最大的作为预测用户的情绪状态。为了基于预测用户的情感来推荐音乐,我们选择与在播放列表中调用预测情感状态的音乐具有最高情感相似性的优化排名音乐列表进行推荐。我们利用最小化迭代算法来组装优化排名的推荐音乐列表。实验结果表明,所提出的基于情感的音乐推荐范例可以有效地跟踪用户的情感并推荐适合其情感状态的音乐。

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