Supervised Machine Learning with Python
Develop rich Python coding practices while exploring supervised machine learning
Seiten
2019
Packt Publishing Limited (Verlag)
978-1-83882-566-9 (ISBN)
Packt Publishing Limited (Verlag)
978-1-83882-566-9 (ISBN)
A supervised learning task infers a function from flagged training data and maps an input to an output based on sample input-output pairs. In this book, you will learn various machine learning techniques (such as linear and logistic regression) and gain the practical knowledge you need to quickly and powerfully apply algorithms to new problems.
Teach your machine to think for itself!
Key Features
Delve into supervised learning and grasp how a machine learns from data
Implement popular machine learning algorithms from scratch, developing a deep understanding along the way
Explore some of the most popular scientific and mathematical libraries in the Python language
Book DescriptionSupervised machine learning is used in a wide range of sectors (such as finance, online advertising, and analytics) because it allows you to train your system to make pricing predictions, campaign adjustments, customer recommendations, and much more while the system self-adjusts and makes decisions on its own. As a result, it's crucial to know how a machine “learns” under the hood.
This book will guide you through the implementation and nuances of many popular supervised machine learning algorithms while facilitating a deep understanding along the way. You’ll embark on this journey with a quick overview and see how supervised machine learning differs from unsupervised learning. Next, we explore parametric models such as linear and logistic regression, non-parametric methods such as decision trees, and various clustering techniques to facilitate decision-making and predictions. As we proceed, you'll work hands-on with recommender systems, which are widely used by online companies to increase user interaction and enrich shopping potential. Finally, you’ll wrap up with a brief foray into neural networks and transfer learning.
By the end of this book, you’ll be equipped with hands-on techniques and will have gained the practical know-how you need to quickly and powerfully apply algorithms to new problems.
What you will learn
Crack how a machine learns a concept and generalize its understanding to new data
Uncover the fundamental differences between parametric and non-parametric models
Implement and grok several well-known supervised learning algorithms from scratch
Work with models in domains such as ecommerce and marketing
Expand your expertise and use various algorithms such as regression, decision trees, and clustering
Build your own models capable of making predictions
Delve into the most popular approaches in deep learning such as transfer learning and neural networks
Who this book is forThis book is for aspiring machine learning developers who want to get started with supervised learning. Intermediate knowledge of Python programming—and some fundamental knowledge of supervised learning—are expected.
Teach your machine to think for itself!
Key Features
Delve into supervised learning and grasp how a machine learns from data
Implement popular machine learning algorithms from scratch, developing a deep understanding along the way
Explore some of the most popular scientific and mathematical libraries in the Python language
Book DescriptionSupervised machine learning is used in a wide range of sectors (such as finance, online advertising, and analytics) because it allows you to train your system to make pricing predictions, campaign adjustments, customer recommendations, and much more while the system self-adjusts and makes decisions on its own. As a result, it's crucial to know how a machine “learns” under the hood.
This book will guide you through the implementation and nuances of many popular supervised machine learning algorithms while facilitating a deep understanding along the way. You’ll embark on this journey with a quick overview and see how supervised machine learning differs from unsupervised learning. Next, we explore parametric models such as linear and logistic regression, non-parametric methods such as decision trees, and various clustering techniques to facilitate decision-making and predictions. As we proceed, you'll work hands-on with recommender systems, which are widely used by online companies to increase user interaction and enrich shopping potential. Finally, you’ll wrap up with a brief foray into neural networks and transfer learning.
By the end of this book, you’ll be equipped with hands-on techniques and will have gained the practical know-how you need to quickly and powerfully apply algorithms to new problems.
What you will learn
Crack how a machine learns a concept and generalize its understanding to new data
Uncover the fundamental differences between parametric and non-parametric models
Implement and grok several well-known supervised learning algorithms from scratch
Work with models in domains such as ecommerce and marketing
Expand your expertise and use various algorithms such as regression, decision trees, and clustering
Build your own models capable of making predictions
Delve into the most popular approaches in deep learning such as transfer learning and neural networks
Who this book is forThis book is for aspiring machine learning developers who want to get started with supervised learning. Intermediate knowledge of Python programming—and some fundamental knowledge of supervised learning—are expected.
Taylor Smith is a machine learning enthusiast with over five years of experience who loves to apply interesting computational solutions to challenging business problems. Currently working as a principal data scientist, Taylor is also an active open source contributor and staunch Pythonista.
Table of Contents
First step towards supervised learning
Implementing parametric models
Working with non-parametric models
Advanced topics in supervised machine learning
Erscheinungsdatum | 31.05.2019 |
---|---|
Verlagsort | Birmingham |
Sprache | englisch |
Maße | 75 x 93 mm |
Themenwelt | Mathematik / Informatik ► Informatik ► Datenbanken |
Mathematik / Informatik ► Informatik ► Programmiersprachen / -werkzeuge | |
Informatik ► Theorie / Studium ► Algorithmen | |
ISBN-10 | 1-83882-566-5 / 1838825665 |
ISBN-13 | 978-1-83882-566-9 / 9781838825669 |
Zustand | Neuware |
Haben Sie eine Frage zum Produkt? |
Mehr entdecken
aus dem Bereich
aus dem Bereich
IT zum Anfassen für alle von 9 bis 99 – vom Navi bis Social Media
Buch | Softcover (2021)
Springer (Verlag)
CHF 41,95
Interlingua zur Gewährleistung semantischer Interoperabilität in der …
Buch | Softcover (2023)
Springer Fachmedien (Verlag)
CHF 46,15
Eine Einführung mit Java
Buch | Hardcover (2020)
dpunkt (Verlag)
CHF 62,85