THE REGULARIZATION COOKBOOK: explore practical recipes to improve the functionality of your ML models
Methodologies and recipes to regularize any machine learning and deep learning model using cutting-edge technologies such as stable diffusion, Dall-E and GPT-3 Purchase of the print or Kindle book includes a free PDF eBook Key Features Learn to diagnose the need for regularization in any machine lea...
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Format: | Elektronisch E-Book |
Sprache: | Englisch |
Veröffentlicht: |
Birmingham, UK
Packt Publishing Ltd.
2023
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Ausgabe: | 1st edition. |
Schlagwörter: | |
Links: | https://learning.oreilly.com/library/view/-/9781837634088/?ar |
Zusammenfassung: | Methodologies and recipes to regularize any machine learning and deep learning model using cutting-edge technologies such as stable diffusion, Dall-E and GPT-3 Purchase of the print or Kindle book includes a free PDF eBook Key Features Learn to diagnose the need for regularization in any machine learning model Regularize different ML models using a variety of techniques and methods Enhance the functionality of your models using state of the art computer vision and NLP techniques Book Description Regularization is an infallible way to produce accurate results with unseen data, however, applying regularization is challenging as it is available in multiple forms and applying the appropriate technique to every model is a must. The Regularization Cookbook provides you with the appropriate tools and methods to handle any case, with ready-to-use working codes as well as theoretical explanations. After an introduction to regularization and methods to diagnose when to use it, you'll start implementing regularization techniques on linear models, such as linear and logistic regression, and tree-based models, such as random forest and gradient boosting. You'll then be introduced to specific regularization methods based on data, high cardinality features, and imbalanced datasets. In the last five chapters, you'll discover regularization for deep learning models. After reviewing general methods that apply to any type of neural network, you'll dive into more NLP-specific methods for RNNs and transformers, as well as using BERT or GPT-3. By the end, you'll explore regularization for computer vision, covering CNN specifics, along with the use of generative models such as stable diffusion and Dall-E. By the end of this book, you'll be armed with different regularization techniques to apply to your ML and DL models. What you will learn Diagnose overfitting and the need for regularization Regularize common linear models such as logistic regression Understand regularizing tree-based models such as XGBoos Uncover the secrets of structured data to regularize ML models Explore general techniques to regularize deep learning models Discover specific regularization techniques for NLP problems using transformers Understand the regularization in computer vision models and CNN architectures Apply cutting-edge computer vision regularization with generative models Who this book is for This book is for data scientists, machine learning engineers, and machine learning enthusiasts, looking to get hands-on knowledge to improve the performances of their models. Basic knowledge of Python is a prerequisite. |
Umfang: | 1 Online-Ressource |
ISBN: | 9781837639724 1837639728 9781837634088 |
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spelling | Vandenbussche, Vincent VerfasserIn aut THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models Vincent Vandenbussche ; foreword by Akin Osman Kazakci 1st edition. Birmingham, UK Packt Publishing Ltd. 2023 1 Online-Ressource Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Methodologies and recipes to regularize any machine learning and deep learning model using cutting-edge technologies such as stable diffusion, Dall-E and GPT-3 Purchase of the print or Kindle book includes a free PDF eBook Key Features Learn to diagnose the need for regularization in any machine learning model Regularize different ML models using a variety of techniques and methods Enhance the functionality of your models using state of the art computer vision and NLP techniques Book Description Regularization is an infallible way to produce accurate results with unseen data, however, applying regularization is challenging as it is available in multiple forms and applying the appropriate technique to every model is a must. The Regularization Cookbook provides you with the appropriate tools and methods to handle any case, with ready-to-use working codes as well as theoretical explanations. After an introduction to regularization and methods to diagnose when to use it, you'll start implementing regularization techniques on linear models, such as linear and logistic regression, and tree-based models, such as random forest and gradient boosting. You'll then be introduced to specific regularization methods based on data, high cardinality features, and imbalanced datasets. In the last five chapters, you'll discover regularization for deep learning models. After reviewing general methods that apply to any type of neural network, you'll dive into more NLP-specific methods for RNNs and transformers, as well as using BERT or GPT-3. By the end, you'll explore regularization for computer vision, covering CNN specifics, along with the use of generative models such as stable diffusion and Dall-E. By the end of this book, you'll be armed with different regularization techniques to apply to your ML and DL models. What you will learn Diagnose overfitting and the need for regularization Regularize common linear models such as logistic regression Understand regularizing tree-based models such as XGBoos Uncover the secrets of structured data to regularize ML models Explore general techniques to regularize deep learning models Discover specific regularization techniques for NLP problems using transformers Understand the regularization in computer vision models and CNN architectures Apply cutting-edge computer vision regularization with generative models Who this book is for This book is for data scientists, machine learning engineers, and machine learning enthusiasts, looking to get hands-on knowledge to improve the performances of their models. Basic knowledge of Python is a prerequisite. Machine learning Deep learning (Machine learning) Apprentissage automatique Apprentissage profond Kazakci, Akin Osman MitwirkendeR ctb 1837634084 Erscheint auch als Druck-Ausgabe 1837634084 |
spellingShingle | Vandenbussche, Vincent THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models Machine learning Deep learning (Machine learning) Apprentissage automatique Apprentissage profond |
title | THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models |
title_auth | THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models |
title_exact_search | THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models |
title_full | THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models Vincent Vandenbussche ; foreword by Akin Osman Kazakci |
title_fullStr | THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models Vincent Vandenbussche ; foreword by Akin Osman Kazakci |
title_full_unstemmed | THE REGULARIZATION COOKBOOK explore practical recipes to improve the functionality of your ML models Vincent Vandenbussche ; foreword by Akin Osman Kazakci |
title_short | THE REGULARIZATION COOKBOOK |
title_sort | the regularization cookbook explore practical recipes to improve the functionality of your ml models |
title_sub | explore practical recipes to improve the functionality of your ML models |
topic | Machine learning Deep learning (Machine learning) Apprentissage automatique Apprentissage profond |
topic_facet | Machine learning Deep learning (Machine learning) Apprentissage automatique Apprentissage profond |
work_keys_str_mv | AT vandenbusschevincent theregularizationcookbookexplorepracticalrecipestoimprovethefunctionalityofyourmlmodels AT kazakciakinosman theregularizationcookbookexplorepracticalrecipestoimprovethefunctionalityofyourmlmodels |