Challenge: Manual Feature Centering
Task
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You are given a small dataset X as a NumPy array of shape (n_samples, n_features). Your goal is to manually center each feature (column) by subtracting its mean, without using scikit-learn. Use vectorized NumPy operations.
- Compute the per-feature means as a 1D array
feature_meansof shape(n_features,). - Create
X_centered = X - feature_meansusing broadcasting. - Compute column means of
X_centeredto verify they are approximately zero. - Do not use loops and do not modify
Xin place.
Solution
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SectionΒ 1. ChapterΒ 4
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Challenge: Manual Feature Centering
Swipe to show menu
Task
Swipe to start coding
You are given a small dataset X as a NumPy array of shape (n_samples, n_features). Your goal is to manually center each feature (column) by subtracting its mean, without using scikit-learn. Use vectorized NumPy operations.
- Compute the per-feature means as a 1D array
feature_meansof shape(n_features,). - Create
X_centered = X - feature_meansusing broadcasting. - Compute column means of
X_centeredto verify they are approximately zero. - Do not use loops and do not modify
Xin place.
Solution
Everything was clear?
Thanks for your feedback!
SectionΒ 1. ChapterΒ 4
single