Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists (pdf)

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Author Alice Zheng, Amanda Casari
Edition 1
Edition Year 2018
Format PDF
ISBN 9781491953242
Language English
Number Of Pages 218
Publisher O’Reilly Media

Description

 

Rather than simply teach these principles, authors Alice Zheng and Amanda Casari focus on practical application with exercises throughout the book. The closing chapter brings everything together by tackling a real-world, structured dataset with several feature-engineering techniques. Python packages including numpy, Pandas, Scikit-learn, and Matplotlib are used in code examples.

You’ll examine:

  • Feature engineering for numeric data: filtering, binning, scaling, log transforms, and power transforms
  • Natural text techniques: bag-of-words, n-grams, and phrase detection
  • Frequency-based filtering and feature scaling for eliminating uninformative features
  • Encoding techniques of categorical variables, including feature hashing and bin-counting
  • Model-based feature engineering with principal component analysis
  • The concept of model stacking, using k-means as a featurization technique
  • Image feature extraction with manual and deep-learning techniques

Feature engineering is a crucial step in the machine-learning pipeline, yet this topic is rarely examined on its own. With this practical book, you’ll learn techniques for extracting and transforming features—the numeric representations of raw data—into formats for machine-learning models. Each chapter guides you through a single data problem, such as how to represent text or image data. Together, these examples illustrate the main principles of feature engineering.

Additional information

Author

Alice Zheng, Amanda Casari

Edition

1

Edition Year

2018

Format

PDF

ISBN

9781491953242

Language

English

Number Of Pages

218

Publisher

O’Reilly Media

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