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Python Feature Engineering Cookbook

You're reading from   Python Feature Engineering Cookbook A complete guide to crafting powerful features for your machine learning models

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Product type Paperback
Published in Aug 2024
Publisher Packt
ISBN-13 9781835883587
Length 396 pages
Edition 3rd Edition
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Author (1):
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Soledad Galli Soledad Galli
Author Profile Icon Soledad Galli
Soledad Galli
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Toc

Table of Contents (14) Chapters Close

Preface 1. Chapter 1: Imputing Missing Data 2. Chapter 2: Encoding Categorical Variables FREE CHAPTER 3. Chapter 3: Transforming Numerical Variables 4. Chapter 4: Performing Variable Discretization 5. Chapter 5: Working with Outliers 6. Chapter 6: Extracting Features from Date and Time Variables 7. Chapter 7: Performing Feature Scaling 8. Chapter 8: Creating New Features 9. Chapter 9: Extracting Features from Relational Data with Featuretools 10. Chapter 10: Creating Features from a Time Series with tsfresh 11. Chapter 11: Extracting Features from Text Variables 12. Index 13. Other Books You May Enjoy

Using power transformations

Power functions are mathematical transformations that follow the <math xmlns="http://www.w3.org/1998/Math/MathML"><mrow><mrow><msub><mi>X</mi><mi>t</mi></msub><mo>=</mo><msup><mi>X</mi><mrow><mi>l</mi><mi>a</mi><mi>m</mi><mi>b</mi><mi>d</mi><mi>a</mi></mrow></msup></mrow></mrow></math> format, where lambda can take any value. The square and cube root transformations are special cases of power transformations where lambda is 1/2 or 1/3, respectively. The challenge resides in finding the value for the lambda parameter. The Box-Cox transformation, which is a generalization of the power transformations, finds the optimal lambda value via maximum likelihood. We will discuss the Box-Cox transformation in the following recipe. In practice, we will try different lambda values and visually inspect the variable distribution to determine which one offers the best transformation. In general, if the data is right-skewed – that is, if observations accumulate toward lower values – we use a lambda value that is smaller than 1, while if the data is left-skewed – that is, there are more observations around higher values – then we use a lambda value that is greater...

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