What is the key difference between 'removal' and 'transformation' of outliers?
- Removal changes the data distribution, while transformation does not
- Removal deals with extreme values, while transformation does not
- Removal discards outliers, while transformation modifies their values
- Removal is a type of data cleaning, while transformation is not
The key difference between 'removal' and 'transformation' of outliers is that removal discards outliers from the dataset, while transformation modifies the values of outliers to reduce their impact.
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