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research-article

Using artificial intelligence to analyze and classify music emotion

Published: 14 August 2024 Publication History

Abstract

With the rapid development of music digitization and online streaming services, automatic analysis and classification of music content has become an urgent need. This research focuses on music sentiment analysis, which is the identification and classification of emotions expressed by music through algorithms. The study defines and classifies possible emotions in music. Then, advanced artificial intelligence techniques, including traditional machine learning and deep learning methods, were employed to perform sentiment analysis on music fragments. In the process of creating and validating the model, the combination of convolutional neural network and long term memory network shows excellent performance in various performance indicators. However, for some complex or culturally ambiguous music fragments, the model may also suffer from misclassification problems. This provides the direction for further optimization of future research aimed at achieving more accurate music emotion analysis.

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Information & Contributors

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Published In

cover image Journal of Computational Methods in Sciences and Engineering
Journal of Computational Methods in Sciences and Engineering  Volume 24, Issue 4-5
2024
1226 pages

Publisher

IOS Press

Netherlands

Publication History

Published: 14 August 2024

Author Tags

  1. Music emotion analysis
  2. artificial intelligence
  3. deep learning
  4. music classification
  5. cultural difference

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