Book Details
Format
Paperback
Pages
622
Language
English
Published
Jul 30, 2022
Publisher
Springer
Edition
2nd ed. 2021
ISBN-10
1071614207
ISBN-13
9781071614204
Description
This book serves as a comprehensive guide to the fundamental principles of statistical learning, tailored for readers who have a basic knowledge of statistics and are keen to delve deeper into data analysis techniques. The authors, a team of respected statisticians, strike a balance between theory and practice, making complex ideas accessible while providing necessary statistical rigor.
Through its structured approach, the narrative leads readers through essential topics such as linear regression, classification, and resampling methods. Each chapter introduces key concepts, accompanied by real-world examples that illuminate how these techniques can be applied using the R programming language.
Moreover, the book emphasizes hands-on learning, allowing readers to develop their analytical skills through practical exercises. The inclusion of R code snippets encourages development in computational skills alongside theoretical knowledge, making it ideal for students and professionals alike.
With an aim to bridge the gap between theoretical statistics and practical application, the book equips readers with robust tools to tackle their own data challenges, promoting a deeper understanding of how statistical methods can inform and enhance decision-making processes.
Through its structured approach, the narrative leads readers through essential topics such as linear regression, classification, and resampling methods. Each chapter introduces key concepts, accompanied by real-world examples that illuminate how these techniques can be applied using the R programming language.
Moreover, the book emphasizes hands-on learning, allowing readers to develop their analytical skills through practical exercises. The inclusion of R code snippets encourages development in computational skills alongside theoretical knowledge, making it ideal for students and professionals alike.
With an aim to bridge the gap between theoretical statistics and practical application, the book equips readers with robust tools to tackle their own data challenges, promoting a deeper understanding of how statistical methods can inform and enhance decision-making processes.
Genres
Science & Technology
Business & Economics