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The Elements of Statistical Learning: Data Mining, Inference, and Prediction [Sp

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Item specifics

Condition
Very Good: A book that does not look new and has been read but is in excellent condition. No obvious ...
ISBN
9780387952840
Publication Year
2003
Series
Series in Statistics
Type
Textbook
Format
Hardcover
Language
English
Publication Name
Elements of Statistical Learning : Data Mining, Inference, and Prediction
Author
Trevor Hastie, Jerome Friedman, Robert Tibshirani
Item Length
9.3in
Publisher
Springer
Item Width
6.1in
Item Weight
38.8 Oz
Number of Pages
552 Pages

About this product

Product Information

This book describes the important ideas in a common conceptual framework. While the approach is statistical, the emphasis is on concepts rather than mathematics. Many examples are given, with a liberal use of color graphics. It should be a valuable resource for statisticians and anyone interested in data mining in science or industry.

Product Identifiers

Publisher
Springer
ISBN-10
0387952845
ISBN-13
9780387952840
eBay Product ID (ePID)
1941922

Product Key Features

Author
Trevor Hastie, Jerome Friedman, Robert Tibshirani
Publication Name
Elements of Statistical Learning : Data Mining, Inference, and Prediction
Format
Hardcover
Language
English
Publication Year
2003
Series
Series in Statistics
Type
Textbook
Number of Pages
552 Pages

Dimensions

Item Length
9.3in
Item Width
6.1in
Item Weight
38.8 Oz

Additional Product Features

Lc Classification Number
Q325.75.F75 2001
Reviews
From the reviews: SIAM REVIEW "The book is very well written and color is used throughout. Color adds a dimension that can be used to help the reader visualize high-dimensional data, and it is also very useful to help the eye see patterns and clusters more easily. This makes color effective in the book and not just a pleasing gimmick. This is the first book of its kind to treat data mining from a statistical perspective that is comprehensive and up-to-date on the statistical methodsa? I found the book to be both innovative and fresh. It provides an important contribution to data mining and statistical pattern recognition. It should become a classica? It is especially good for statisticians interested in high-dimensional and high-volume data such as can be found in telephone records, satellite images, and genetic microarrays. It can be used for an advanced special topics course in statistics for graduate students." TECHNOMETRICS "[This] is a vast and complex book. Generally, it concentrates on explaining why and how the methods work, rather than how to use them. Examples and especially the visualizations are principle featuresa? As a source for the methods of statistical learninga? it will probably be a long time before there is a competitor to this book." SHORT BOOK REVIEWS "This book describes modern tools for data analysis. With the exception of the last chapter, it is concerned with "supervised" methods - those methods in which a sample of cases is available, including values of an outcome variable, and on which one can build a model allowing one to predict the value of the outcome variable for new cases. The authors are amongst the leaders in this area, having developed many of the modern tools. Such methods have seen extraordinary development in recent decades, primarily because of progress in computer technology, but also because of the huge range of applications. Furthermore, the practical development of these modeling and inferential tools has resulted in a deeper theoretical understanding of the modeling process... The book includes many special cases and examples, which give insights into the ideas and methods. It explains very clearly the relationships between the methods, and covers both standard statistical staples, such as linear and logistic regression, as well as modern tools. It is not overburdened with unnecessary mathematics but uses only what is necessary for the practical application of the methods...The book has been beautifully produced. It was a pleasure to read. I strongly recommend it." MATHEMATICAL REVIEWS "The book provides a comprehensive and up-to-date introduction to the field of statistical pattern recognition, now commonly referred to as statistical learninga? Browsing through the book, one is immediately attracted to the skillful use of color plots to stress the different behaviors of algorithms on real-world datasets. This tells a lot about the books style: intuition about a learning technique is built by looking at the behavior on the data, then the statistical analysis follows. However, even in its most technical parts, the presentation flows very smoothly, avoiding the definition-theorem-proof writing stylea? this is a very complete and up-to-date work covering all the most important learning techniques, which are presented in a rigorous but accessible statistical framework." JOURNAL OF CLASSIFICATION, JUNE 2004 "This is a great book. All three authors have track records for clear exposition and are famously gifted for finding intuitive explanations that illuminate technical resultsa? In particular, we admire the book for its: -outstanding use of real data examples to motivate problems and methods; -unified treatment of flexible inferential procedures in terms of maximization of an objective function subject to a complexity penal
Copyright Date
2003
Target Audience
Scholarly & Professional
Topic
Probability & Statistics / General, Computer Science, Databases / General
Lccn
2001-031433
Dewey Decimal
006.3/1
Dewey Edition
21
Illustrated
Yes
Genre
Computers, Mathematics

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Goodwill of South Central Wisconsin

Goodwill of South Central Wisconsin

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  • Great book Great product

    First of all, this is a great book. Second, this is a great buy, in terms of quality and price.

    Verified purchase: YesCondition: Pre-OwnedSold by: candyce514

  • Excellent book

    This is a very well written book on data mining/statistical learning. If you want to learn more about modern statistical methods, then this is a "must have" book. The emphasis is on applications and there are many interesting examples. Would recommend to anybody who deals with applied statistics.