The Music Generation Road from Statistical Method to Deep Learning

Jiayun Xu, Weiting Qu, Dixin Li, Changjiang Zhang
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引用次数: 0

Abstract

Automatic music generation is regarded as one of the most concerning research areas. However, the current music generation AI model lacks mainstream algorithms and norms, including model evaluation standards and objective music quality measurements. In this paper, we conducted experiments on traditional statistical models, machine learning models and deep learning models to generate music, respectively involving Markov Chain, SVM, Random Forest, LSTM, GAN models and their variants. In addition, we also proposed three new quantitative methods to measure the quality of computer-generated music using technical metrics: the Key Confidence Test, the Random Walk Test and the Word2Vec Similarity Test. These methods could be used to measure the quality of generated music and avoid the subjectivity of manual evaluation, thus providing reference for future music evaluation tasks.
从统计方法到深度学习的音乐生成之路
音乐自动生成一直是人们关注的研究领域之一。然而,目前的音乐生成AI模型缺乏主流的算法和规范,包括模型评价标准和客观的音乐质量测量。在本文中,我们分别在传统的统计模型、机器学习模型和深度学习模型上进行了音乐生成实验,分别涉及Markov Chain、SVM、Random Forest、LSTM、GAN模型及其变体。此外,我们还提出了三种新的定量方法来使用技术指标来衡量计算机生成音乐的质量:关键置信度测试、随机漫步测试和Word2Vec相似性测试。这些方法可以用来衡量生成音乐的质量,避免人工评价的主观性,为以后的音乐评价工作提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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