Analysis of the effect of dataset construction methodology on transferability of music emotion recognition models

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Abstract

Indexing and retrieving music based on emotion is a powerful retrieval paradigm with many applications. Traditionally, studies in the field of music emotion recognition have focused on training and testing supervised machine learning models using a single music dataset. To be useful for today's vast music libraries, however, such machine learning models must be widely applicable beyond the dataset for which they were created. In this work, we analyze to what extent models trained on one music dataset can predict emotion in another dataset constructed using a different methodology, by conducting cross-dataset experiments with three publicly available datasets. Our results suggest that training a prediction model on a homogeneous dataset with carefully collected emotion annotations yields a better foundation than prediction models learned on a larger, more varied dataset, with less reliable annotations.

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Hult, S., Kreiberg, L. B., Brandt, S. S., & Jónsson, B. P. (2020). Analysis of the effect of dataset construction methodology on transferability of music emotion recognition models. In ICMR 2020 - Proceedings of the 2020 International Conference on Multimedia Retrieval (pp. 316–320). Association for Computing Machinery, Inc. https://doi.org/10.1145/3372278.3390733

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