Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.

This study develops an innovative method for analyzing and clustering tonal trends in Chinese Yue Opera to identify different vocal styles accurately. Linear interpolation is applied to process the time series data of vocal melodies, addressing inconsistent feature dimensions. The second-order diffe...

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Main Authors: Yuhang Zhang, Xiaofeng Wu, Jiawei Xu, Zihao Ning, Xiao Han
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0313065
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author Yuhang Zhang
Xiaofeng Wu
Jiawei Xu
Zihao Ning
Xiao Han
author_facet Yuhang Zhang
Xiaofeng Wu
Jiawei Xu
Zihao Ning
Xiao Han
author_sort Yuhang Zhang
collection DOAJ
description This study develops an innovative method for analyzing and clustering tonal trends in Chinese Yue Opera to identify different vocal styles accurately. Linear interpolation is applied to process the time series data of vocal melodies, addressing inconsistent feature dimensions. The second-order difference method extracts tonal trend features. We introduce a fuzzy C-means clustering method enhanced by quantum particle swarm optimization (QPSO) to manage data uncertainties, improving classification accuracy and convergence speed. Additionally, we employ a cross-correlation function to eliminate uncertainties from tonal transition redundancies. We designed a detection algorithm using trend data to validate our clustering method, thereby enhancing the accuracy of the analysis of tonal ranges and potential models. This method detects whether Yue Opera adheres to traditional rhythmic norms and models the regularity of musical tones and vocal patterns. Simulation results reveal that our approach achieves a 91.4% accuracy in classifying vocal styles, surpassing traditional methods and demonstrating its potential for identifying various styles. This research offers technical support for Yue Opera music education and interdisciplinary research. The findings enhance the quality of artistic creation and performance in Yue Opera, ensuring its preservation and development.
format Article
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institution Kabale University
issn 1932-6203
language English
publishDate 2025-01-01
publisher Public Library of Science (PLoS)
record_format Article
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spelling doaj-art-57e313f1809c442eb0efed59409f86fb2025-02-05T05:32:10ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01201e031306510.1371/journal.pone.0313065Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.Yuhang ZhangXiaofeng WuJiawei XuZihao NingXiao HanThis study develops an innovative method for analyzing and clustering tonal trends in Chinese Yue Opera to identify different vocal styles accurately. Linear interpolation is applied to process the time series data of vocal melodies, addressing inconsistent feature dimensions. The second-order difference method extracts tonal trend features. We introduce a fuzzy C-means clustering method enhanced by quantum particle swarm optimization (QPSO) to manage data uncertainties, improving classification accuracy and convergence speed. Additionally, we employ a cross-correlation function to eliminate uncertainties from tonal transition redundancies. We designed a detection algorithm using trend data to validate our clustering method, thereby enhancing the accuracy of the analysis of tonal ranges and potential models. This method detects whether Yue Opera adheres to traditional rhythmic norms and models the regularity of musical tones and vocal patterns. Simulation results reveal that our approach achieves a 91.4% accuracy in classifying vocal styles, surpassing traditional methods and demonstrating its potential for identifying various styles. This research offers technical support for Yue Opera music education and interdisciplinary research. The findings enhance the quality of artistic creation and performance in Yue Opera, ensuring its preservation and development.https://doi.org/10.1371/journal.pone.0313065
spellingShingle Yuhang Zhang
Xiaofeng Wu
Jiawei Xu
Zihao Ning
Xiao Han
Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.
PLoS ONE
title Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.
title_full Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.
title_fullStr Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.
title_full_unstemmed Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.
title_short Clustering analysis of Yue opera character tone trends based on quantum particle swarm optimization for fuzzy C-means.
title_sort clustering analysis of yue opera character tone trends based on quantum particle swarm optimization for fuzzy c means
url https://doi.org/10.1371/journal.pone.0313065
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