Unsupervised Learning: Clustering - Numerical Applications

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Q. In DBSCAN, what does the term 'epsilon' refer to?
  • A. The minimum number of points required to form a cluster
  • B. The maximum distance between two points to be considered in the same cluster
  • C. The number of clusters to form
  • D. The density of the clusters
Q. What is the main advantage of using DBSCAN over K-Means?
  • A. It is faster for large datasets
  • B. It can find clusters of arbitrary shape
  • C. It requires fewer parameters
  • D. It is easier to implement
Q. What type of data is best suited for clustering algorithms?
  • A. Labeled data
  • B. Unlabeled data
  • C. Time series data
  • D. Sequential data
Q. Which clustering algorithm is best for identifying spherical clusters?
  • A. DBSCAN
  • B. Agglomerative Clustering
  • C. K-Means
  • D. Gaussian Mixture Models
Q. Which evaluation metric is NOT typically used for clustering algorithms?
  • A. Silhouette Score
  • B. Davies-Bouldin Index
  • C. Accuracy
  • D. Inertia
Q. Which of the following algorithms is commonly used for clustering numerical data?
  • A. Linear Regression
  • B. K-Means
  • C. Decision Trees
  • D. Support Vector Machines
Q. Which of the following is an application of clustering in real-world scenarios?
  • A. Spam detection in emails
  • B. Customer segmentation in marketing
  • C. Predicting stock prices
  • D. Image classification
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