- Python Data Analysis Cookbook
- Ivan Idris
- 76字
- 2025-04-04 19:55:25
Chapter 4. Dealing with Data and Numerical Issues
The recipes in this chapter are as follows:
- Clipping and filtering outliers
- Winsorizing data
- Measuring central tendency of noisy data
- Normalizing with the Box-Cox transformation
- Transforming data with the power ladder
- Transforming data with logarithms
- Rebinning data
- Applying
logit()
to transform proportions - Fitting a robust linear model
- Taking variance into account with weighted least squares
- Using arbitrary precision for optimization
- Using arbitrary precision for linear algebra