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Título
Multi-agent system application for music features extraction, meta-classification and context analysis
Autor(es)
Palabras clave
Music classification
Multi-agent system
Multi-label classification
Meta-classifiers
Musical genre
Musical emotions
Social networks
Clasificación UNESCO
1203 Ciencia de los ordenadores
Fecha de publicación
2019
Editor
Springer
Citación
Pérez-Marcos, J., Jiménez-Bravo, D. M., De Paz, J. F., Villarrubia González, G., López, V. F., & Gil, A. B. (2020). Multi-agent system application for music features extraction, meta-classification and context analysis. Knowledge and Information Systems, 62(1), 401-422. https://doi.org/10.1007/S10115-018-1319-2
Resumen
[EN]Manual music classification is a slow and costly process. Most recent works about music auto-classification such as genre or emotions make this process easier, but are focused on a single task. In this work, a music multi-classification platform is presented. This platform is based on multi-agent systems, allowing to distribute the extraction, classification, and service tasks among agents. The platform performs a musical genre and emotional classification and provides context information of songs from social networks such as Twitter and Last.fm. The methods chosen based on meta-classifiers to perform single-label and multi-label classification obtain great results. In the case of multi-label classification, better results are obtained than in other previous works.
URI
ISSN
0219-1377
DOI
10.1007/S10115-018-1319-2
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