What happens to a model's performance when missing data is not handled correctly?
- It depends on the model.
- It deteriorates.
- It improves.
- It remains the same.
When missing data is not handled correctly, it can distort the underlying data distribution and lead to incorrect model learning, ultimately deteriorating the model's performance.
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