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Evaluate the errors in pitch class vector prediction
- overall metrics for the full dataset splits
- accuracy (on binary classes, full chords)
- hamming distance (on binary classes, individual tones)
- AUC (on probabilities, more informative)
- metrics on separate songs
- how they differ?
- confusion matrix (matrices)
- 12x 2x2 - for each pitch class separately
- 1x 4096x4096 - for whole pitch class vectors
- plot a line of error per time frame
- which places are more erroneous?
- How to take into consideration class imbalance?
- imbalance in tones vs. silence (1 vs. 0)
- imbalance across pitch classes