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Main Authors: Jónsson, Björn Þór, Erdem, Çağrı, Fasciani, Stefano, Glette, Kyrre
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.02783
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author Jónsson, Björn Þór
Erdem, Çağrı
Fasciani, Stefano
Glette, Kyrre
author_facet Jónsson, Björn Þór
Erdem, Çağrı
Fasciani, Stefano
Glette, Kyrre
contents Digital sound synthesis presents the opportunity to explore vast parameter spaces containing millions of configurations. Quality diversity (QD) evolutionary algorithms offer a promising approach to harness this potential, yet their success hinges on appropriate sonic feature representations. Existing QD methods predominantly employ handcrafted descriptors or supervised classifiers, potentially introducing unintended exploration biases and constraining discovery to familiar sonic regions. This work investigates unsupervised dimensionality reduction methods for automatically defining and dynamically reconfiguring sonic behaviour spaces during QD search. We apply Principal Component Analysis (PCA) and autoencoders to project high-dimensional audio features onto structured grids for MAP-Elites, implementing dynamic reconfiguration through model retraining at regular intervals. Comparison across two experimental scenarios shows that automatic approaches achieve significantly greater diversity than handcrafted behaviour spaces while avoiding expert-imposed biases. Dynamic behaviour-space reconfiguration maintains evolutionary pressure and prevents stagnation, with PCA proving most effective among the dimensionality reduction techniques. These results contribute to automated sonic discovery systems capable of exploring vast parameter spaces without manual intervention or supervised training constraints.
format Preprint
id arxiv_https___arxiv_org_abs_2512_02783
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Exploring Definitions of Quality and Diversity in Sonic Measurement Spaces
Jónsson, Björn Þór
Erdem, Çağrı
Fasciani, Stefano
Glette, Kyrre
Sound
Neural and Evolutionary Computing
Digital sound synthesis presents the opportunity to explore vast parameter spaces containing millions of configurations. Quality diversity (QD) evolutionary algorithms offer a promising approach to harness this potential, yet their success hinges on appropriate sonic feature representations. Existing QD methods predominantly employ handcrafted descriptors or supervised classifiers, potentially introducing unintended exploration biases and constraining discovery to familiar sonic regions. This work investigates unsupervised dimensionality reduction methods for automatically defining and dynamically reconfiguring sonic behaviour spaces during QD search. We apply Principal Component Analysis (PCA) and autoencoders to project high-dimensional audio features onto structured grids for MAP-Elites, implementing dynamic reconfiguration through model retraining at regular intervals. Comparison across two experimental scenarios shows that automatic approaches achieve significantly greater diversity than handcrafted behaviour spaces while avoiding expert-imposed biases. Dynamic behaviour-space reconfiguration maintains evolutionary pressure and prevents stagnation, with PCA proving most effective among the dimensionality reduction techniques. These results contribute to automated sonic discovery systems capable of exploring vast parameter spaces without manual intervention or supervised training constraints.
title Exploring Definitions of Quality and Diversity in Sonic Measurement Spaces
topic Sound
Neural and Evolutionary Computing
url https://arxiv.org/abs/2512.02783