Skewness Be Gone: Transformative Tricks for Data Scientists
Data transformations enable data scientists to refine, normalize, and standardize raw data into a format ripe for analysis. These transformations are not merely procedural steps; they are essential in mitigating biases, handling skewed distributions, and enhancing the robustness of statistical models. This post will primarily focus on how to address skewed data. By focusing on the ‘SalePrice’ and ‘YearBuilt’ attributes from the Ames housing dataset, we will provide examples of positive and negative skewed data and illustrate ways to normalize their distributions using transformations.
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