Verse1-Chorus-Verse2 Structure: A Stacked Ensemble Approach for Enhanced Music Emotion Recognition

Author:

Raboy Love Jhoye Moreno1,Taparugssanagorn Attaphongse1ORCID

Affiliation:

1. Department of Information and Communication Technologies, School of Engineering and Technology, Asian Institute of Technology, 58 Moo 9, Km. 42, Paholyothin Highway, Klong Luang, P.O. Box 4, Pathum Thani 12120, Thailand

Abstract

In this study, we present a novel approach for music emotion recognition that utilizes a stacked ensemble of models integrating audio and lyric features within a structured song framework. Our methodology employs a sequence of six specialized base models, each designed to capture critical features from distinct song segments: verse1, chorus, and verse2. These models are integrated into a meta-learner, resulting in superior predictive performance, achieving an accuracy of 96.25%. A basic stacked ensemble model was also used in this study to independently run the audio and lyric features for each song segment. The six-input stacked ensemble model surpasses the capabilities of models analyzing song parts in isolation. The pronounced enhancement underscores the importance of a bimodal approach in capturing the full spectrum of musical emotions. Furthermore, our research not only opens new avenues for studying musical emotions but also provides a foundational framework for future investigations into the complex emotional aspects of music.

Publisher

MDPI AG

Reference38 articles.

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2. Soon, B. (2024, April 03). Stacking to Improve Model Performance: A Comprehensive Guide to Ensemble Learning in Python. Available online: https://medium.com/@brijesh_soni/stacking-to-improve-model-performance-a-comprehensive-guide-on-ensemble-learning-in-python-9ed53c93ce28.

3. Panda, R., Redinho, H., Gonçalves, C., Malheiro, R., and Paiva, R.P. (July, January 20). How does the Spotify API compare to the Music Emotion Recognition State-of-the-art. Proceedings of the 18th Sound and Music Computing Conference, Virtual.

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