Johnson Transformation for Non-Normal Data

A number of inferential statistical tests (A/B tests and significance tests) assume that the underlying that we’re comparing come from a normal (Gaussian) distribution. However, this isn’t generally true for a number of data sets in practice. In order to use the tools that assume normality, we have to transform the data (and the limits […]

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