While estimating the coefficients in Simple Linear Regression, you find that one of the assumptions is not met. How would this affect the reliability of the predictions?
- Increase Accuracy
- Make Predictions More Reliable
- Make Predictions Unreliable
- No Effect
If the assumptions of Simple Linear Regression are not met, the reliability of the predictions may be compromised, and the model may become biased or inefficient.
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