Measurement of Music Aesthetics Using Deep Neural Networks and Dissonances

Inf. Comput. Pub Date : 2023-06-24 DOI:10.3390/info14070358
Razvan Paroiu, Stefan Trausan-Matu
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引用次数: 1

Abstract

In this paper, a new method that computes the aesthetics of a melody fragment is proposed, starting from dissonances. While music generated with artificial intelligence applications may be produced considerably more quickly than human-composed music, it has the drawback of not being appreciated like a human composition, being many times perceived by humans as artificial. For achieving supervised machine learning objectives of improving the quality of the great number of generated melodies, it is a challenge to ask humans to grade them. Therefore, it would be preferable if the aesthetics of artificial-intelligence-generated music is calculated by an algorithm. The proposed method in this paper is based on a neural network and a mathematical formula, which has been developed with the help of a study in which 108 students evaluated the aesthetics of several melodies. For evaluation, numerical values generated by this method were compared with ratings provided by human listeners from a second study in which 30 students participated and scores were generated by an existing different method developed by psychologists and three other methods developed by musicians. Our method achieved a Pearson correlation of 0.49 with human aesthetic scores, which is a much better result than other methods obtained. Additionally, our method made a distinction between human-composed melodies and artificial-intelligence-generated scores in the same way that human listeners did.
用深度神经网络和不协和音测量音乐美学
本文提出了一种从不协和音开始计算旋律片段美学的新方法。虽然人工智能应用程序生成的音乐可能比人类创作的音乐快得多,但它的缺点是不像人类作品那样被欣赏,很多时候被人类认为是人造的。为了实现监督机器学习的目标,即提高生成的大量旋律的质量,要求人类对它们进行评分是一个挑战。因此,如果人工智能生成的音乐的美学是由算法计算的,那将是更可取的。本文提出的方法是基于神经网络和数学公式,该方法是在108名学生评估几个旋律美学的研究的帮助下发展起来的。为了进行评估,将这种方法产生的数值与第二项研究中人类听众提供的评分进行比较,该研究有30名学生参与,分数是由心理学家开发的现有不同方法和音乐家开发的其他三种方法产生的。我们的方法与人类审美评分的Pearson相关性为0.49,这比其他方法得到的结果要好得多。此外,我们的方法以与人类听众相同的方式区分人类作曲的旋律和人工智能生成的乐谱。
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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