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Related Questions
- What is the ROC-AUC score and its significance in binary classification models?
- How does the ROC-AUC score relate to precision and recall in binary classification?
- What are the advantages and limitations of using the ROC-AUC score to evaluate binary classification models?
- Can you explain the Receiver Operating Characteristic (ROC) curve and how it is used to evaluate binary classification models?
- How can the ROC-AUC score be used to compare the performance of different binary classification models?
- What is the difference between the ROC-AUC score and the Area Under the Curve (AUC) score in binary classification?
- How can the ROC-AUC score be used to identify the optimal threshold for a binary classification model?
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