Intro to Time Series
The Box-Cox transformation is a family of power transformations used to stabilize variance and make the data more closely meet the assumptions of normality. It is particularly helpful in time series analysis, as it can help improve the performance of SARIMA models by addressing issues such as non-constant variance or skewed distributions, ultimately leading to better estimation and forecasting results.
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