Hands-On Gradient Boosting with XGBoost and scikit-learn
Packt Publishing Limited (Verlag)
978-1-83921-835-4 (ISBN)
Get to grips with building robust XGBoost models using Python and scikit-learn for deployment
Key Features
Get up and running with machine learning and understand how to boost models with XGBoost in no time
Build real-world machine learning pipelines and fine-tune hyperparameters to achieve optimal results
Discover tips and tricks and gain innovative insights from XGBoost Kaggle winners
Book DescriptionXGBoost is an industry-proven, open-source software library that provides a gradient boosting framework for scaling billions of data points quickly and efficiently.
The book introduces machine learning and XGBoost in scikit-learn before building up to the theory behind gradient boosting. You’ll cover decision trees and analyze bagging in the machine learning context, learning hyperparameters that extend to XGBoost along the way. You’ll build gradient boosting models from scratch and extend gradient boosting to big data while recognizing speed limitations using timers. Details in XGBoost are explored with a focus on speed enhancements and deriving parameters mathematically. With the help of detailed case studies, you’ll practice building and fine-tuning XGBoost classifiers and regressors using scikit-learn and the original Python API. You'll leverage XGBoost hyperparameters to improve scores, correct missing values, scale imbalanced datasets, and fine-tune alternative base learners. Finally, you'll apply advanced XGBoost techniques like building non-correlated ensembles, stacking models, and preparing models for industry deployment using sparse matrices, customized transformers, and pipelines.
By the end of the book, you’ll be able to build high-performing machine learning models using XGBoost with minimal errors and maximum speed.
What you will learn
Build gradient boosting models from scratch
Develop XGBoost regressors and classifiers with accuracy and speed
Analyze variance and bias in terms of fine-tuning XGBoost hyperparameters
Automatically correct missing values and scale imbalanced data
Apply alternative base learners like dart, linear models, and XGBoost random forests
Customize transformers and pipelines to deploy XGBoost models
Build non-correlated ensembles and stack XGBoost models to increase accuracy
Who this book is forThis book is for data science professionals and enthusiasts, data analysts, and developers who want to build fast and accurate machine learning models that scale with big data. Proficiency in Python, along with a basic understanding of linear algebra, will help you to get the most out of this book.
Corey Wade, M.S. Mathematics, M.F.A. Writing and Consciousness, is the founder and director of Berkeley Coding Academy, where he teaches machine learning and AI to teens from all over the world. Additionally, Corey chairs the Math Department at the Independent Study Program of Berkeley High School, where he teaches programming and advanced math. His additional experience includes teaching natural language processing with Hello World, developing data science curricula with Pathstream, and publishing original statistics (3NG) and machine learning articles with Towards Data Science, Springboard, and Medium. Corey is co-author of the Python Workshop, also published by Packt.
Table of Contents
Machine Learning Landscape
Decision Trees in Depth
Bagging with Random Forests
From Gradient Boosting to XGBoost
XGBoost Unveiled
XGBoost Hyperparameters
Discovering Exoplanets with XGBoost
XGBoost Alternative Base Learners
XGBoost Kaggle Masters
XGBoost Model Deployment
Erscheinungsdatum | 21.10.2020 |
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Vorwort | Kevin Glynn |
Verlagsort | Birmingham |
Sprache | englisch |
Maße | 75 x 93 mm |
Themenwelt | Informatik ► Theorie / Studium ► Künstliche Intelligenz / Robotik |
Mathematik / Informatik ► Mathematik ► Computerprogramme / Computeralgebra | |
ISBN-10 | 1-83921-835-5 / 1839218355 |
ISBN-13 | 978-1-83921-835-4 / 9781839218354 |
Zustand | Neuware |
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