A1 Refereed original research article in a scientific journal

Decoding Cultural Music Classification with Machine Learning and Segment Length Analysis




AuthorsAbebe, Mesfin; Endashew, Leta; Heikkonen, Jukka; Kanth, Rajeev; Mohapatra, Sudhir Kumar

PublisherSpringer Science and Business Media LLC

Publication year2026

Journal: SN Computer Science

Article number146

Volume7

Issue2

ISSN2662-995X

eISSN2661-8907

DOIhttps://doi.org/10.1007/s42979-026-04747-6

Publication's open availability at the time of reportingOpen Access

Publication channel's open availability Partially Open Access publication channel

Web address https://doi.org/10.1007/s42979-026-04747-6

Self-archived copy’s web addresshttps://research.utu.fi/converis/portal/detail/Publication/509007786

Self-archived copy's licenceCC BY

Self-archived copy's versionPublisher`s PDF


Abstract
Music is a sound composed with rhythm, melody, or harmony, and it is evolving in time and with the culture of the society. The manual way of classifying and searching of the Ethiopian music is time consuming, and expensive. In this study, an Ethiopian cultural music classification models are proposed to simplify this task. A large number of Ethiopian cultural music are collected from YouTube and other online music database. This data set has 10 classes based on the music genre. Eight machine learning algorithms are employed to build the classification models: Logistic Regression, Naive Bayes, KNN, MLP, SVM, Decision Trees, Random Forest, and Adaboost algorithms. The models are optimized using manual hyperparameter tuning, randomized search, grid search, genetic algorithm (TPOT classifier), Bayesian (hyperopt), and Optuna optimization techniques. Based on the experiments, Random Forest outperforms the other algorithms with 80% accuracy. Statistical analysis using one-way ANOVA confirmed that optimization significantly improved classification performance (p < 0.05). Confusion matrix analysis revealed that certain regional styles, such as Gojam and Somali, were more prone to misclassification due to overlapping rhythmic and tonal features. The results demonstrate that machine learning can effectively classify Ethiopian cultural music and provide a foundation for developing intelligent music retrieval and recommendation systems.

Downloadable publication

This is an electronic reprint of the original article.
This reprint may differ from the original in pagination and typographic detail. Please cite the original version.




Funding information in the publication
Open Access funding provided by University of Turku (including Turku University Central Hospital). No specific funding received.


Last updated on 13/02/2026 08:49:51 AM