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A Methodology for the Computational Evaluation of Style Imitation Algorithms

机译:样式模仿算法的计算评估方法

摘要

We investigate Musical Metacreation algorithms by applying Music Information Retrieval techniques for comparing the output of three off-line, corpus-based style imitation algorithms. The first is Variable Order Markov Chains, a statistical model; second is the Factor Oracle, a pattern matcher; and third, MusiCOG, a novel graphical model based on perceptual processes. Our focus is on discovering which musical biases are introduced by the algorithms, that is, the characteristics of the output which are shaped directly by the formalism of the algorithms and not by the corpus itself. We describe META-MELO, a system that implements the three algorithms, along with a methodology for the quantitative analysis of algorithm output, when trained on a corpus of melodies in symbolic form. Results show that the algorithms’ output are indeed different, although none of them encompass completely the full feature-set belonging to the style of the corpus. We conclude that this methodology is promising for aiding in the informed application and development of generative algorithms for music composition problems.
机译:我们通过应用音乐信息检索技术来比较三种离线的,基于语料库的样式模仿算法的输出,从而研究音乐创造算法。第一个是统计模型可变阶马尔可夫链。第二个是因子Oracle,一个模式匹配器。第三,MusiCOG,一种基于感知过程的新颖图形模型。我们的重点是发现算法引入了哪些音乐偏见,即输出的特征直接由算法的形式而不是由语料本身决定。我们将描述META-MELO,该系统可在以符号形式对旋律语料库进行训练时实现三种算法,以及对算法输出进行定量分析的方法。结果表明,算法的输出确实有所不同,尽管它们都没有完全包含属于语料库样式的完整功能集。我们得出的结论是,这种方法有望帮助音乐创作问题的知性应用和生成算法的开发。

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    Gonzalez Thomas Nicolas M;

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  • 年度 2016
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