机器学习模型与神经网络在音乐体裁分类中的比较

Zizhi Ma
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摘要

在音乐类型分类方面,神经网络和机器学习模型各有优势。本文旨在比较神经网络与传统机器学习算法在音乐类型分类上的性能和特征提取能力。提取9个主要音乐特征的所有分量作为基本特征,每个特征有7个统计值,并采用不同的降维方法。本文比较了神经网络和机器学习模型训练特征的性能。最后,本文将神经网络中各层的输出作为特征,并应用传统的机器学习模型进行训练,看看它们的性能是否可以优化。结果表明,与基本特征相比,性能提高了约20%,与减少特征相比,性能提高了约5%。因此,可以得出结论,神经网络的特征提取能力优于传统的机器学习模型。此外,利用神经网络过滤的特征和传统的机器学习模型进行训练是一种性能优异、效率高的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison between Machine Learning Models and Neural Networks on Music Genre Classification
In terms of music genre classification, neural networks and machine learning models have their respective advantages. This paper aims to compare the performance and feature extraction capability between neural networks and traditional machine learning algorithms on music genre classification. All the components of 9 main music features, each with seven statistical values, were extracted as essential features, and different dimension reduction methods were applied. This paper compares the performance of training the features by neural networks and machine learning models. Finally, this paper used the output of layers in the neural networks as features and applied traditional machine learning models for training to see if their performance could be optimized. The result showed that the performance was raised by about 20%, compared to the essential features, and raised by about 5%, compared to the reduced features. So, it can be concluded that the feature extraction capability of neural networks is better than traditional machine learning models. Also, using features filtered by neural networks and applying traditional machine learning models for training is a method providing both excellent performance and high efficiency.
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