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The Art Of Feature Engineering Essentials For Machine Learning 1st Edition Pablo Duboue

  • SKU: BELL-11091710
The Art Of Feature Engineering Essentials For Machine Learning 1st Edition Pablo Duboue
$ 31.00 $ 45.00 (-31%)

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The Art Of Feature Engineering Essentials For Machine Learning 1st Edition Pablo Duboue instant download after payment.

Publisher: Cambridge University Press
File Extension: PDF
File size: 8.39 MB
Pages: 283
Author: Pablo Duboue
ISBN: 9781108709385, 1108709389
Language: English
Year: 2020
Edition: 1

Product desciption

The Art Of Feature Engineering Essentials For Machine Learning 1st Edition Pablo Duboue by Pablo Duboue 9781108709385, 1108709389 instant download after payment.

When machine learning engineers work with data sets, they may find the results aren't as good as they need. Instead of improving the model or collecting more data, they can use the feature engineering process to help improve results by modifying the data's features to better capture the nature of the problem. This practical guide to feature engineering is an essential addition to any data scientist's or machine learning engineer's toolbox, providing new ideas on how to improve the performance of a machine learning solution. Beginning with the basic concepts and techniques, the text builds up to a unique cross-domain approach that spans data on graphs, texts, time series, and images, with fully worked out case studies. Key topics include binning, out-of-fold estimation, feature selection, dimensionality reduction, and encoding variable-length data. The full source code for the case studies is available on a companion website as Python Jupyter notebooks.

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