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Probability & Statistics - Linear Regression - Model Assumptions

Regression relies on strict rules: Linearity, Independence, Homoscedasticity (constant variance), and Normality of errors. If these assumptions are violated, the model's predictions and p-values become unreliable or misleading.
Probability & Statistics - Linear Regression - Model Assumptions
Reader: Linear Regression Assumptions

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