Supervised Learning: Regression and Classification - Numerical Applications

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Q. In a classification problem, what does the term 'overfitting' refer to?
  • A. The model performs well on training data but poorly on unseen data
  • B. The model is too simple to capture the underlying trend
  • C. The model has too few features
  • D. The model is trained on too much data
Q. What is the purpose of the training set in supervised learning?
  • A. To evaluate the model's performance
  • B. To tune hyperparameters
  • C. To train the model on labeled data
  • D. To visualize data distributions
Q. What is the role of a validation set in supervised learning?
  • A. To train the model
  • B. To test the model's performance on unseen data
  • C. To tune hyperparameters and prevent overfitting
  • D. To visualize data
Q. Which metric is best suited for evaluating a multi-class classification model?
  • A. Mean Absolute Error
  • B. F1 Score
  • C. Root Mean Squared Error
  • D. R-squared
Q. Which of the following is a common application of regression analysis?
  • A. Image classification
  • B. Spam detection
  • C. Predicting house prices
  • D. Customer segmentation
Q. Which of the following is a common application of supervised learning?
  • A. Market segmentation
  • B. Spam detection
  • C. Anomaly detection
  • D. Data compression
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