An Introduction to Statistical Learning : With Applications in R
An Introduction to Statistical Learning : With Applications in R
Click to enlarge
Author(s): Hastie, Trevor
James, Gareth
Tibshirani, Robert
Witten, Daniela
ISBN No.: 9781461471370
Pages: xiv, 426
Year: 201709
Format: Trade Cloth (Hard Cover)
Price: $ 110.39
Status: Out Of Print

"This book by James, Witten, Hastie, and Tibshirani was a great pleasure to read, and I was extremely surprised by it and the available material. In my opinion, it is the best book for teaching statistical learning approaches to undergraduate and master students in statistics. All in all, this is a great textbook for teaching an introductory course in statistical learning. In my opinion, there is no better book for teaching modern statistical learning at the introductory level." (Andreas Ziegler, Biometrical Journal, Vol. 58 (3), May, 2016) "This book has a very strong advantage that sets it well ahead of the competition when it comes to learning about machine learning: it covers all of the necessary details that one has to know in order to apply or implement a machine learning algorithm in a real-world problem. Hence, this book will definitely be of interest to readers from many fields, ranging from computer science to business administration and marketing." (Charalambos Poullis, Computing Reviews, September, 2014) "The book provides a good introduction to R.


The code for all the statistical methods introduced in the book is carefully explained. the book will certainly be useful to many people (including me). I will surely use many examples, labs and datasets from this book in my own lectures." (Pierre Alquier, Mathematical Reviews, July, 2014) "The stated purpose of this book is to facilitate the transition of statistical learning to mainstream. it adds information by including more detail and R code to some of the topics in Elements of Statistical Learning. I am having a lot of fun playing with the code that goes with book. I am glad that this was written." (Mary Anne, Cats and Dogs with Data, maryannedata.


com, June, 2014) "This book (ISL) is a great Master''s level introduction to statistical learning: statistics for complex datasets. the homework problems in ISL are at a Master''s level for students who want to learn how to use statistical learning methods to analyze data. ISL contains 12 very valuable R labs that show how to use many of the statistical learning methods with the R package ISLR ." (David Olive, Technometrics, Vol. 56 (2), May, 2014) "Written by four experts of the field, this book offers an excellent entry to statistical learning to a broad audience, including those without strong background in mathematics. The end-of-chapter exercises make the book an ideal text for both classroom learning and self-study. The book is suitable for anyone interested in using statistical learning tools to analyze data. It can be used as a textbook for advanced undergraduate and master''s students in statistics or related quantitative fields.


" (Jianhua Z. Huang, Journal of Agricultural, Biological, and Environmental Statistics, Vol. 19, 2014) "It aims to introduce modern statistical learning methods to students, researchers and practitioners who are primarily interested in analysing data and want to be confined only with the implementation of the statistical methodology and subsequent interpretation of the results. the book also demonstrates how to apply these methods using various R packages by providing detailed worked examples using interesting real data applications." (Klaus Nordhausen, International Statistical Review, Vol. 82 (1), 2014) "The book is structured in ten chapters covering tools for modeling and mining of complex real life data sets. The style is suitable for undergraduates and researchers . and the understanding of concepts is facilitated by the exercises, both practical and theoretical, which accompany every chapter.


" (Irina Ioana Mohorianu, zbMATH, Vol. 1281, 2014)  "The book excels in providing the theoretical and mathematical basis for machine learning, and now at long last, a practical view with the inclusion of R programming examples. It is the latter portion of the update that I''ve been waiting for as it directly applies to my work in data science. Give the new state of this book, I''d classify it as the authoritative text for any machine learning practitioner.This is one book you need to get if you''re serious about this growing field." (Daniel Gutierrez, Inside Big Data, inside-bigdata.com, October 2013).


To be able to view the table of contents for this publication then please subscribe by clicking the button below...
To be able to view the full description for this publication then please subscribe by clicking the button below...