Causal Inference
Homoscedasticity refers to the property of a dataset where the variance of the errors is constant across all levels of an independent variable. This concept is crucial in regression analysis because it ensures that the model's estimates are reliable and valid. When homoscedasticity is present, the spread of residuals remains uniform, which helps in making accurate predictions and understanding relationships within the data.
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