Composing the Assemblage: Probing Aesthetic and Technical Dimensions of Artistic Creation with Machine Learning

IF 0.4 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computer Music Journal Pub Date : 2023-11-10 DOI:10.1162/comj_a_00658
Artemi-Maria Gioti, Aaron Einbond, Georgina Born
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Abstract

Abstract In this article we address the role of machine learning (ML) in the composition of two new musical works for acoustic instruments and electronics through autoethnographic reflection on the experience. Our study poses the key question of how ML shapes, and is in turn shaped by, the aesthetic commitments characterizing distinctive compositional practices. Further, we ask how artistic research in these practices can be informed by critical themes from humanities scholarship on material engagement and critical data studies. Through these frameworks, we consider in what ways the interaction with ML algorithms as part of the compositional process differs from that with other music technology tools. Rather than focus on narrowly conceived ML algorithms, we take into account the heterogeneous assemblage brought into play: from composers, performers, and listeners to loudspeakers, microphones, and audio descriptors. Our analysis focuses on a deconstructive critique of data as being contingent on the decisions and material conditions involved in the data creation process. It also explores how interaction among the human and nonhuman collaborators in the ML assemblage has significant similarities to—as well as differences from—existing models of material engagement. Tracking the creative process of composing these works, we uncover the aesthetic implications of the many nonlinear collaborative decisions involved in composing the assemblage.
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组合:用机器学习探索艺术创作的美学与技术维度
在本文中,我们通过对经验的自我民族志反思来解决机器学习(ML)在两部声学乐器和电子学新音乐作品创作中的作用。我们的研究提出了一个关键问题,即ML是如何形成的,并且反过来又被塑造为具有独特构图实践特征的美学承诺。此外,我们想知道这些实践中的艺术研究如何能从人文学科关于材料参与和关键数据研究的关键主题中得到启示。通过这些框架,我们考虑了与ML算法的交互作为作曲过程的一部分与其他音乐技术工具的不同之处。而不是专注于狭隘的ML算法,我们考虑到异构组合带来的影响:从作曲家,表演者,听众到扬声器,麦克风和音频描述符。我们的分析侧重于对数据的解构性批判,因为数据创建过程中涉及的决策和物质条件是偶然的。它还探讨了机器学习组合中人类和非人类合作者之间的交互如何具有显着的相似性以及与现有材料参与模型的差异。通过跟踪这些作品的创作过程,我们揭示了这些作品组合中涉及的许多非线性协同决策的美学含义。
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来源期刊
Computer Music Journal
Computer Music Journal 工程技术-计算机:跨学科应用
CiteScore
1.80
自引率
0.00%
发文量
2
审稿时长
>12 weeks
期刊介绍: Computer Music Journal is published quarterly with an annual sound and video anthology containing curated music¹. For four decades, it has been the leading publication about computer music, concentrating fully on digital sound technology and all musical applications of computers. This makes it an essential resource for musicians, composers, scientists, engineers, computer enthusiasts, and anyone exploring the wonders of computer-generated sound. Edited by experts in the field and featuring an international advisory board of eminent computer musicians, issues typically include: In-depth articles on cutting-edge research and developments in technology, methods, and aesthetics of computer music Reports on products of interest, such as new audio and MIDI software and hardware Interviews with leading composers of computer music Announcements of and reports on conferences and courses in the United States and abroad Publication, event, and recording reviews Tutorials, letters, and editorials Numerous graphics, photographs, scores, algorithms, and other illustrations.
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