Unsupervised Learning: Clustering - Real World Applications

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Q. How can clustering be applied in healthcare?
  • A. Grouping patients with similar symptoms
  • B. Predicting disease outbreaks
  • C. Classifying medical images
  • D. Forecasting patient admissions
Q. How can clustering be used in healthcare?
  • A. To predict patient outcomes
  • B. To group patients with similar symptoms
  • C. To classify diseases
  • D. To automate billing processes
Q. In which scenario would clustering be most beneficial?
  • A. Identifying customer groups in a retail dataset
  • B. Predicting future sales
  • C. Classifying emails as spam or not spam
  • D. Forecasting weather patterns
Q. In which scenario would clustering be most useful?
  • A. Identifying customer groups in a dataset
  • B. Predicting future sales
  • C. Classifying emails as spam or not
  • D. Forecasting weather patterns
Q. What is a key advantage of using clustering in data analysis?
  • A. It requires labeled data
  • B. It can reveal hidden patterns
  • C. It is always more accurate than supervised learning
  • D. It eliminates the need for data preprocessing
Q. What is a key benefit of using clustering in social network analysis?
  • A. Finding communities within the network
  • B. Predicting user behavior
  • C. Classifying posts as positive or negative
  • D. Identifying outliers in data
Q. What is a potential drawback of using K-means clustering?
  • A. It can handle non-spherical clusters
  • B. It requires the number of clusters to be specified in advance
  • C. It is computationally expensive
  • D. It can only be used with numerical data
Q. What is the primary goal of clustering in data analysis?
  • A. To find natural groupings in data
  • B. To predict future outcomes
  • C. To classify data into predefined categories
  • D. To reduce dimensionality
Q. What is the primary goal of clustering in data mining?
  • A. To predict future values
  • B. To group similar data points
  • C. To classify data into predefined categories
  • D. To reduce dimensionality
Q. What type of data is clustering most effective with?
  • A. Unlabeled data
  • B. Labeled data
  • C. Time series data
  • D. Sequential data
Q. Which clustering algorithm is commonly used for grouping similar documents?
  • A. K-means
  • B. Linear Regression
  • C. Decision Trees
  • D. Support Vector Machines
Q. Which clustering method is particularly effective for large datasets?
  • A. Hierarchical clustering
  • B. K-means clustering
  • C. DBSCAN
  • D. Gaussian Mixture Models
Q. Which of the following is NOT a common use case for clustering?
  • A. Market segmentation
  • B. Anomaly detection
  • C. Image classification
  • D. Social network analysis
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