Algorithmically Flexible Style Composition Through Multi-Objective Fitness Functions

S. Murray, D. Ventura
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引用次数: 4

Abstract

Creating a musical fitness function is largely subjective and can be critically affected by the designer's biases. Previous attempts to create such functions for use in genetic algorithms lack scope or are prejudiced to a certain genre of music. They also are limited to producing music strictly in the style determined by the programmer. We show in this paper that musical feature extractors, which avoid the challenges of qualitative judgment, enable creation of a multi-objective function for direct music production. The main result is that the multi-objective fitness function enables creation of music with varying identifiable styles. To demonstrate this, we use three different multi-objective fitness functions to create three distinct sets of musical melodies. We then evaluate the distinctness of these sets using three different approaches: a set of traditional computational clustering metrics; a survey of non-musicians; and analysis by three trained musicians.
基于多目标适应度函数的算法灵活风格构成
创造音乐适应性功能在很大程度上是主观的,可能会受到设计师偏见的严重影响。以前为遗传算法创建这样的函数的尝试缺乏范围,或者对某种音乐类型有偏见。他们也被限制在严格按照程序员决定的风格制作音乐。我们在本文中展示了音乐特征提取器,它避免了定性判断的挑战,可以为直接音乐制作创建多目标函数。主要结果是,多目标适应度功能可以创作出具有不同可识别风格的音乐。为了证明这一点,我们使用三种不同的多目标适应度函数来创建三组不同的音乐旋律。然后,我们使用三种不同的方法来评估这些集合的独特性:一组传统的计算聚类指标;对非音乐家的调查;还有三位训练有素的音乐家的分析。
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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