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Feature Engineering Made Easy

You're reading from   Feature Engineering Made Easy Identify unique features from your dataset in order to build powerful machine learning systems

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Product type Paperback
Published in Jan 2018
Publisher Packt
ISBN-13 9781787287600
Length 316 pages
Edition 1st Edition
Languages
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Authors (2):
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Sinan Ozdemir Sinan Ozdemir
Author Profile Icon Sinan Ozdemir
Sinan Ozdemir
 Susarla Susarla
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Susarla
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Toc

Table of Contents (14) Chapters Close

Title Page
Copyright and Credits
Packt Upsell
Contributors
Preface
1. Introduction to Feature Engineering FREE CHAPTER 2. Feature Understanding – What's in My Dataset? 3. Feature Improvement - Cleaning Datasets 4. Feature Construction 5. Feature Selection 6. Feature Transformations 7. Feature Learning 8. Case Studies 1. Other Books You May Enjoy

Linear Discriminant Analysis


Linear Discriminant Analysis (LDA) is a feature transformation technique as well as a supervised classifier. It is commonly used as a preprocessing step for classification pipelines. The goal of LDA, like PCA, is to extract a new coordinate system and project datasets onto a lower-dimensional space. The main difference between LDA and PCA is that instead of focusing on the variance of the data as a whole like PCA, LDA optimizes the lower-dimensional space for the best class separability. This means that the new coordinate system is more useful in finding decision boundaries for classification models, which is perfect for us when building classification pipelines.

Note

The reason that LDA is extremely useful is that separating based on class separability helps us avoid overfitting in our machine learning pipelines. This is also known as preventing the curse of dimensionality. LDA also reduces computational costs.

How LDA works

LDA works as a dimensionality reduction...

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