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Advantages and Disadvantages of Naive Bayes Classifier
Advantages:
- Easy to understand.
- Highly efficient learning and prediction.
- Works well with high-dimensional data.
- Used as a baseline comparison.
Disadvantages:
- Generalization is worse compared to more sophisticated models.
- The conditional independence assumption doesn't always hold.
- Low accuracy of the confidence estimates for predictions.
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Updated 2026-07-05
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