Creative Improvised Interaction with Generative Musical Systems

S. Dubnov, G. Assayag, V. Gokul
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Abstract

In this paper we survey the methods for control and cre-ative interaction with pre-trained generative models for au-dio and music. By using reduced (lossy) encoding and sym-bolization steps we are able to examine the level of information that is passing between the environment (the musician) and the agent (machine improvisation). We further use the concept of music information dynamics to find an optimal symbolization in terms of predictive information measure. Methods and strategies for generative models are surveyed in this paper and their implications for creative interaction with the machine are discussed in the musical improvisation framework.
创造性的即兴互动与生成音乐系统
在本文中,我们调查了控制和创造性互动的方法与预训练生成模型的音频和音乐。通过使用减少的(有损的)编码和符号化步骤,我们能够检查在环境(音乐家)和代理(机器即兴创作)之间传递的信息水平。我们进一步利用音乐信息动力学的概念,从预测信息度量的角度寻找最佳符号化。本文对生成模型的方法和策略进行了调查,并在音乐即兴框架中讨论了它们对与机器创造性互动的影响。
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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