Standardization is sorely lacking in the field of musical machine learning. This thesis project endeavors to contribute to this standardization by training three machine learning models on the same dataset and comparing them using the same metrics. The music-specific metrics utilized provide more relevant information for diagnosing the shortcomings of each model.
Included in this item (2)
- Comparative Evaluation of Generative Machine Learning Models for Jazz Improvisation using Numerical Metrics