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Regularization In Deep Learning Meap V04 Chapters 1 To 7 Of 10 Peng Liu

  • SKU: BELL-47496812
Regularization In Deep Learning Meap V04 Chapters 1 To 7 Of 10 Peng Liu
$ 31.00 $ 45.00 (-31%)

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Regularization In Deep Learning Meap V04 Chapters 1 To 7 Of 10 Peng Liu instant download after payment.

Publisher: Manning Publications
File Extension: PDF
File size: 9.88 MB
Pages: 323
Author: Peng Liu
ISBN: 9781633439610, 1633439615
Language: English
Year: 2022
Edition: Chapters 1 to 7 of 10

Product desciption

Regularization In Deep Learning Meap V04 Chapters 1 To 7 Of 10 Peng Liu by Peng Liu 9781633439610, 1633439615 instant download after payment.

Make your deep learning models more generalized and adaptable! These practical regularization techniques improve training efficiency and help avoid overfitting errors. Regularization in Deep Learning teaches you how to improve your model performance with a toolbox of regularization techniques. It covers both well-established regularization methods and groundbreaking modern approaches. Each technique is introduced using graphics, illustrations, and step-by-step coding walkthroughs that make complex math easy to follow. You’ll learn how to augment your dataset with random noise, improve your model’s architecture, and apply regularization in your optimization procedures. You’ll soon be building focused deep learning models that avoid sprawling complexity and deliver more accurate results even with new or messy data sets.

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