Computer Science & IT

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Q. Which evaluation metric is commonly used to assess the performance of a Support Vector Machine?
  • A. Accuracy
  • B. Mean Squared Error
  • C. Silhouette Score
  • D. F1 Score
Q. Which evaluation metric is commonly used to assess the performance of a Support Vector Machine model?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. Confusion Matrix
Q. Which evaluation metric is commonly used to assess the performance of an SVM model?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. Confusion Matrix
Q. Which evaluation metric is commonly used to assess the performance of classification models in cloud ML services?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. R-squared
Q. Which evaluation metric is commonly used to assess the performance of Decision Trees?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. F1 Score
Q. Which evaluation metric is commonly used to assess the performance of Decision Trees in classification tasks?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. R-squared
Q. Which evaluation metric is commonly used to assess the quality of clustering results?
  • A. Accuracy
  • B. Silhouette score
  • C. F1 score
  • D. Mean squared error
Q. Which evaluation metric is commonly used to assess the quality of clustering?
  • A. Accuracy
  • B. Silhouette score
  • C. F1 score
  • D. Mean squared error
Q. Which evaluation metric is commonly used to assess the quality of embeddings?
  • A. Accuracy
  • B. F1 Score
  • C. Cosine Similarity
  • D. Mean Squared Error
Q. Which evaluation metric is most appropriate for a binary classification problem with imbalanced classes?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Squared Error
  • D. R-squared
Q. Which evaluation metric is most appropriate for a binary classification problem?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. R-squared
Q. Which evaluation metric is most appropriate for a model predicting rare events?
  • A. Accuracy
  • B. Recall
  • C. F1 Score
  • D. Mean Squared Error
Q. Which evaluation metric is most appropriate for a multi-class classification problem?
  • A. Accuracy
  • B. F1 Score
  • C. Log Loss
  • D. All of the above
Q. Which evaluation metric is most appropriate for a regression model predicting house prices?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Absolute Error
  • D. Precision
Q. Which evaluation metric is most appropriate for a regression model?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Absolute Error
  • D. Confusion Matrix
Q. Which evaluation metric is most appropriate for a regression problem?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Absolute Error
  • D. Confusion Matrix
Q. Which evaluation metric is most appropriate for assessing a model deployed for a binary classification task?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. R-squared
Q. Which evaluation metric is most appropriate for assessing the performance of a Decision Tree on an imbalanced dataset?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Squared Error
  • D. R-squared
Q. Which evaluation metric is most appropriate for assessing the performance of a Decision Tree on a binary classification problem?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. R-squared
Q. Which evaluation metric is most appropriate for assessing the performance of a linear regression model?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Absolute Error (MAE)
  • D. Confusion Matrix
Q. Which evaluation metric is most appropriate for assessing the performance of an SVM model?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. Confusion Matrix
Q. Which evaluation metric is most appropriate for assessing the performance of an SVM model in a binary classification task?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. Adjusted R-squared
Q. Which evaluation metric is most appropriate for assessing the performance of an SVM model on an imbalanced dataset?
  • A. Accuracy
  • B. Precision
  • C. Recall
  • D. F1 Score
Q. Which evaluation metric is most appropriate for assessing the performance of an SVM classifier?
  • A. Mean Squared Error
  • B. Accuracy
  • C. Silhouette Score
  • D. Adjusted Rand Index
Q. Which evaluation metric is most appropriate for assessing the performance of an SVM model on imbalanced datasets?
  • A. Accuracy
  • B. Precision
  • C. Recall
  • D. F1 Score
Q. Which evaluation metric is most appropriate for imbalanced classification problems?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Squared Error
  • D. R-squared
Q. Which evaluation metric is most appropriate for regression models during deployment?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Absolute Error (MAE)
  • D. Confusion Matrix
Q. Which evaluation metric is most appropriate for regression tasks?
  • A. Accuracy
  • B. Mean Absolute Error (MAE)
  • C. F1 Score
  • D. Precision
Q. Which evaluation metric is most sensitive to class imbalance?
  • A. Accuracy
  • B. Precision
  • C. Recall
  • D. F1 Score
Q. Which evaluation metric is most suitable for assessing clustering performance?
  • A. Accuracy
  • B. F1 Score
  • C. Adjusted Rand Index
  • D. Mean Absolute Error
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