Clustering Methods: K-means, Hierarchical - Problem Set

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Q. What does the 'K' in K-means represent?
  • A. The number of iterations the algorithm runs
  • B. The number of clusters to form
  • C. The number of features in the dataset
  • D. The distance metric used
Q. What is a common method to determine the optimal number of clusters in K-means?
  • A. Elbow method
  • B. Cross-validation
  • C. Grid search
  • D. Random search
Q. Which of the following scenarios is best suited for K-means clustering?
  • A. Identifying customer segments based on purchasing behavior
  • B. Classifying emails as spam or not spam
  • C. Predicting house prices based on features
  • D. Finding the optimal path in a navigation system
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