Intro to Probabilistic Methods
Residuals are the differences between the observed values and the values predicted by a regression model. They represent the error in predictions made by the model, and analyzing these residuals helps assess the model's accuracy and identify patterns that might suggest improvements. Understanding residuals is crucial for evaluating the fit of a simple linear regression model and ensuring that assumptions about the errors are met.
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