The Elements of Statistical Learning: Data Mining, Inference, and Prediction
During the past decade there has been an explosion in computation and information technology. With it have come vast amounts of data in a variety of fields such as medicine, biology, finance, and marketing. The challenge of understanding these data has led to the development of new tools in the field of statistics, and spawned new areas such as data mining, machine learnin
...moreHardcover, Second Edition, 768 pages
Published
February 9th 2009
by Springer
(first published July 30th 2003)
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Joecolelife
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review of another edition
Recommended to Joecolelife by:
www.CocoMartini.com
Shelves:
college-textbooks
This book is a miracle of clarity and comprehensiveness. It presents a unified approach to state of the art machine learning techniques from a statistical perspective. The layout is logical and the level of math is appropriate for applications-oriented engineers and computer scientists, as well as theorists. Sections where the book does need to go into heavier mathematics are clearly marked and generally optional. I found the book very easy to read, but at the same time very comprehensive.
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Amir-massoud
rated it
·
review of another edition
Recommends it for:
anyone who is interested in machine learning
Recommended to Amir-massoud by:
Dale Schuurmans
Shelves:
machine-learning
This book surveys many modern machine learning tools ranging from generalized linear models to SVM, boosting, different types of trees, etc.
The presentation is more or less mathematical, but the book does not provide a deep analysis of why a specific method works. Instead, it gives you some intuition about what a method is trying to do. And this is the reason I like this book so much. Without going into mathematical details, it summarizes all necessary (and really important) things you ne...more
The presentation is more or less mathematical, but the book does not provide a deep analysis of why a specific method works. Instead, it gives you some intuition about what a method is trying to do. And this is the reason I like this book so much. Without going into mathematical details, it summarizes all necessary (and really important) things you ne...more
Darin Brezeale
marked it as reference-only
The topics are described more from a statistics perspective than the computer science perspective, but as written by statisticians for computer scientists instead of for other statisticians. The examples are interesting and the graphics very nice.
An extremely well-written introduction to machine learning. I now understand why this is the universal textbook for machine learning classes.
The math is described at a reasonably high level, but the authors do a fantastic job emphasizing the conceptual differences between different learning algorithms. A major focus of this text is on conditions which favor some algorithms over others in minimizing variability for different learning exercises. While this book is not a very pragmatic te...more
The math is described at a reasonably high level, but the authors do a fantastic job emphasizing the conceptual differences between different learning algorithms. A major focus of this text is on conditions which favor some algorithms over others in minimizing variability for different learning exercises. While this book is not a very pragmatic te...more
One of the more useful stat machine learning books I've read. Correct authors are Hastie, Friedman, and Tibshirani.
recommended by USC CS student as best of the machine learning books
Requires a very thorough grasp of linear algebra. A little too complex for my level of understanding.
Great book covering the principles of applied statistical learning. The book's mathematical rigor is semi-formal, opting for intuitive explanations and keeping proofs to a minimum. Chapters contain a thorough treatment of their subject, touching on modern research topics.
Hoxie
added it
So far, so good... if I could understand everything in this book, I'd be a statistical learning ninja.
Download PDF at http://www-stat.stanford.edu/~tibs/ElemS...
Ziyad Basheer
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