Figure 1. ROC curves for anger emotion class
Figure 2. ROC curves for disgust emotion class
Figure 3. ROC curves for fear emotion class
Figure 4. ROC curves for joy emotion class
Figure 5. ROC curves for sadness emotion class
Figure 6. ROC curves for surprise emotion class
Table 1. Performance Evaluation Results
Table 2. Confusion Matrix for Adaboost
Table 3. Confusion Matrix for Random Forest
Table 4. Confusion Matrix for Decision
Table 5. Confusin Matrix for KNN
Table 6. Confusion Matrix for Logistic Regression
Table 7. Confusion Matrix for Naive Bayes
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