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Main Authors: Xue, Chenhao, Hu, Weitao, Chakraborty, Joyraj, Guo, Zhijin, Li, Kang, Shi, Tianyu, Reed, Martin, Thomos, Nikolaos
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.28644
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author Xue, Chenhao
Hu, Weitao
Chakraborty, Joyraj
Guo, Zhijin
Li, Kang
Shi, Tianyu
Reed, Martin
Thomos, Nikolaos
author_facet Xue, Chenhao
Hu, Weitao
Chakraborty, Joyraj
Guo, Zhijin
Li, Kang
Shi, Tianyu
Reed, Martin
Thomos, Nikolaos
contents Combining multiple audio features can improve the performance of music tagging, but common deep learning-based feature fusion methods often lack interpretability. To address this problem, we propose a Genetic Programming (GP) pipeline that automatically evolves composite features by mathematically combining base music features, thereby capturing synergistic interactions while preserving interpretability. This approach provides representational benefits similar to deep feature fusion without sacrificing interpretability. Experiments on the MTG-Jamendo and GTZAN datasets demonstrate consistent improvements compared to state-of-the-art systems across base feature sets at different abstraction levels. It should be noted that most of the performance gains are noticed within the first few hundred GP evaluations, indicating that effective feature combinations can be identified under modest search budgets. The top evolved expressions include linear, nonlinear, and conditional forms, with various low-complexity solutions at top performance aligned with parsimony pressure to prefer simpler expressions. Analyzing these composite features further reveals which interactions and transformations tend to be beneficial for tagging, offering insights that remain opaque in black-box deep models.
format Preprint
id arxiv_https___arxiv_org_abs_2603_28644
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Constructing Composite Features for Interpretable Music-Tagging
Xue, Chenhao
Hu, Weitao
Chakraborty, Joyraj
Guo, Zhijin
Li, Kang
Shi, Tianyu
Reed, Martin
Thomos, Nikolaos
Sound
Machine Learning
Multimedia
Combining multiple audio features can improve the performance of music tagging, but common deep learning-based feature fusion methods often lack interpretability. To address this problem, we propose a Genetic Programming (GP) pipeline that automatically evolves composite features by mathematically combining base music features, thereby capturing synergistic interactions while preserving interpretability. This approach provides representational benefits similar to deep feature fusion without sacrificing interpretability. Experiments on the MTG-Jamendo and GTZAN datasets demonstrate consistent improvements compared to state-of-the-art systems across base feature sets at different abstraction levels. It should be noted that most of the performance gains are noticed within the first few hundred GP evaluations, indicating that effective feature combinations can be identified under modest search budgets. The top evolved expressions include linear, nonlinear, and conditional forms, with various low-complexity solutions at top performance aligned with parsimony pressure to prefer simpler expressions. Analyzing these composite features further reveals which interactions and transformations tend to be beneficial for tagging, offering insights that remain opaque in black-box deep models.
title Constructing Composite Features for Interpretable Music-Tagging
topic Sound
Machine Learning
Multimedia
url https://arxiv.org/abs/2603.28644