Foundations of Data Science
The Box-Cox transformation is a statistical technique used to stabilize variance and make data more closely conform to a normal distribution. This transformation is particularly useful in linear regression and other statistical modeling techniques, as it helps to meet the assumptions of normality and homoscedasticity, improving the validity of the results. It applies a power transformation, where the data is raised to a specific power determined by a parameter lambda ($\lambda$), enabling better handling of non-normal response variables.
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