Supervised Learning: Regression and Classification - Advanced Concepts

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Q. In a classification problem, what does a confusion matrix represent?
  • A. The relationship between features
  • B. The performance of a classification model
  • C. The distribution of data points
  • D. The training time of the model
Q. In regression analysis, what does R-squared indicate?
  • A. The strength of the relationship between variables
  • B. The proportion of variance explained by the model
  • C. The accuracy of predictions
  • D. The number of features used in the model
Q. In supervised learning, what is the role of the training dataset?
  • A. To evaluate the model's performance
  • B. To tune hyperparameters
  • C. To train the model to learn patterns
  • D. To visualize data
Q. What does the ROC curve represent in classification problems?
  • A. The relationship between precision and recall
  • B. The trade-off between true positive rate and false positive rate
  • C. The accuracy of the model over different thresholds
  • D. The distribution of predicted probabilities
Q. What is the main advantage of using ensemble methods in supervised learning?
  • A. They are simpler to implement
  • B. They reduce the risk of overfitting
  • C. They combine predictions from multiple models to improve accuracy
  • D. They require less data for training
Q. What is the main difference between regression and classification?
  • A. Regression predicts continuous values, while classification predicts discrete labels
  • B. Regression is unsupervised, while classification is supervised
  • C. Regression uses more features than classification
  • D. There is no difference
Q. What is the purpose of regularization in regression models?
  • A. To increase the model complexity
  • B. To reduce the training time
  • C. To prevent overfitting by penalizing large coefficients
  • D. To improve the interpretability of the model
Q. What is the purpose of regularization in supervised learning?
  • A. To increase the complexity of the model
  • B. To prevent overfitting
  • C. To improve training speed
  • D. To enhance feature selection
Q. Which algorithm is typically used for binary classification tasks?
  • A. K-Means Clustering
  • B. Linear Regression
  • C. Logistic Regression
  • D. Principal Component Analysis
Q. Which of the following is a common evaluation metric for regression models?
  • A. Accuracy
  • B. F1 Score
  • C. Mean Absolute Error
  • D. Confusion Matrix
Q. Which of the following techniques can be used to handle imbalanced datasets in classification?
  • A. Data augmentation
  • B. Feature scaling
  • C. Cross-validation
  • D. Resampling methods
Q. Which of the following techniques can help prevent overfitting?
  • A. Increasing the number of features
  • B. Using a more complex model
  • C. Cross-validation
  • D. Ignoring validation data
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