Questions
Questions

Data Science Principles (202504-LLecture)

Single choice

Which of the following is NOT an advantage of feature engineering?

Options
A.a. Reduces dataset size
B.b. Improves predictive performance
C.c. Uncovers hidden patterns
D.d. Enhances model accuracy
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Question restatement: Which of the following is NOT an advantage of feature engineering? Option a: 'a. Reduces dataset size' — This is typically not considered an advantage of feature engineering. Feature engineering focuses on creating informative features, transforming data, and possibly increasing the dimensionality or complexit......Login to view full explanation

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