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Music emotions recognition by cognitive classification methodologies

机译:音乐情绪通过认知分类方法识别

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Music emotions recognition (MER) is a challenging field of studies addressed in multiple disciplines such as musicology, cognitive science, physiology, psychology, arts and affective computing. In this paper, music emotions are classified into four types known as those of pleasing, angry, sad and relaxing. MER is formulated as a classification problem in cognitive computing where 548 dimensions of music features are extracted and modeled. A comprehensive set of classification algorithms are explored and comparatively studied for MER including Support Vector Machine (SVM), k-Nearest Neighbors (KNN), Neuro-Fuzzy Networks Classification (NFNC), Fuzzy KNN (FKNN), Bayes classifier and Linear Discriminant Analysis (LDA). Experimental results show that the SVM, FKNN and LDA algorithms are the most effective methodologies which obtain more than 80% accuracy for MER in performance.
机译:音乐情绪认可(MER)是一个具有挑战性的研究领域,涉及多个学科,如音乐学,认知科学,生理学,心理学,艺术和情感计算。在本文中,音乐情绪被分为四种类型,称为令人愉悦,愤怒,悲伤和放松的类型。 MER被制定为认知计算中的分类问题,其中提取和建模548个音乐特征的维度。探讨了一套全面的分类算法,对MER进行了竞争,包括支持向量机(SVM),K-CORMALT邻居(KNN),神经模糊网络分类(NFNC),模糊KNN(FKNN),贝叶斯分类器和线性判别分析(LDA)。实验结果表明,SVM,FKNN和LDA算法是最有效的方法,其在性能中获得超过80±%的精度。

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