Difference between revisions of "2005:Symbolic Genre Classification Results"
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Revision as of 10:36, 31 July 2010
Introduction
Goal: To classify MIDI recordings into genre categories.
Dataset: Two sets of genre categories were used, one consisting of 38 categories and one consisting of 9 categories. Each category was represented by 25 MIDI files.Thus, the 38 genre test contained 950 MIDI files and the 9 genre test contained 225 MIDI files.Test runs were 3-fold crossvalidated with each algorithm tested using identical training and testing data splits.
Results
Overall
OVERALL | |||
---|---|---|---|
Rank | Participant | Mean Hierarchical Classification Accuracy | Mean Raw Classification Accuracy |
1 | McKay & Fujinaga | 77.17% | 65.28% |
2 | Basili, Serafini, & Stellato (NB) | 72.08% | 58.53% |
3 | Li, M. | 67.57% | 55.90% |
4 | Basili, Serafini, & Stellato (J48) | 67.14% | 53.14% |
5 | Ponce de Leon & Inesta | 37.76% | 26.52% |
38 Classes
38 Classes | ||||||||
---|---|---|---|---|---|---|---|---|
Rank | Participant | Hierarchical Classification Accuracy | Hierarchical Classification Accuracy Std | Raw Classification Accuracy | Raw Classification Accuracy Std | Runtime (s) | Machine | Confusion Matrix Files |
1 | McKay & Fujinaga | 64.33% | 1.04 | 46.11% | 1.51 | 3 days | R | MF_38eval.txt |
2 | Basili, Serafini, & Stellato (NB) | 62.60% | 0.26 | 45.05% | 0.55 | N/A | N/A | BST_NB_38eval.txt |
3 | Basili, Serafini, & Stellato (J48) | 57.61% | 1.14 | 40.95% | 1.35 | N/A | N/A | BST_J48_38eval.txt |
4 | Li, M. | 54.91% | 0.66 | 39.79% | 0.87 | 15,948 | G | L_38eval.txt |
5 | Ponce de Leon & Inesta | 24.84% | 1.40 | 15.26% | 1.13 | 821 | L | PI_38eval.txt |
9 Classes
9 Classes | ||||||||
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Rank | Participant | Hierarchical Classification Accuracy | Hierarchical Classification Accuracy Std | Raw Classification Accuracy | Raw Classification Accuracy Std | Runtime (s) | Machine | Confusion Matrix Files |
1 | McKay & Fujinaga | 90.00% | 0.60 | 84.44% | 1.41 | 18,375 | R | MF_9eval.txt |
2 | Basili, Serafini, & Stellato (NB) | 81.56% | 0.76 | 72.00% | 0.88 | N/A | N/A | BST_NB_9eval.txt |
3 | Li, M. | 80.22% | 1.47 | 72.00% | 2.31 | 3,777 | G | L_9eval.txt |
4 | Basili, Serafini, & Stellato (J48) | 76.67% | 1.11 | 65.33% | 1.65 | N/A | N/A | BST_J48_9eval.txt |
5 | Ponce de Leon & Inesta | 50.67% | 1.26 | 37.78% | 2.30 | 197 | L | PI_9eval.txt |