Supervised vs Unsupervised Learning Test

Supervised vs Unsupervised Learning Test (Free MCQs)

Supervised vs Unsupervised Learning Free Online Test Overview

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Supervised vs Unsupervised Learning Test for Data Science

15 MCQs with Answers and Detailed Solutions

Total Questions: 15


[Image of supervised and unsupervised learning comparison diagram]

1. Supervised learning uses:


2. Unsupervised learning uses:


3. Classification is an example of:


4. Regression is an example of:


5. Clustering algorithms belong to:


6. Dimensionality reduction like PCA is a type of:


7. Supervised learning requires:


8. Unsupervised learning aims to:


9. Decision trees can be used for:


10. K-means clustering is a:


11. Which learning type requires a loss function comparing predicted vs actual output?


12. Which method can be used to find customer segments in marketing data?


13. K-nearest neighbors (KNN) can be used for:


14. Hierarchical clustering is used for:


15. Which of the following best describes the main difference between supervised and unsupervised learning?

Quiz Results Summary

Total Questions: 15

Correct Answers: 0

Incorrect Answers: 0

Total Score: 0 / 30

Percentage Score: 0.00%

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