What could be the potential problems if the assumptions of Simple Linear Regression are not met?
- Model May Become Biased or Inefficient
- Model May Overfit
- Model Will Always Fail
- No Impact on Model
If the assumptions of Simple Linear Regression are not met, the model may become biased or inefficient, leading to unreliable estimates. It may also affect the validity of statistical tests.
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