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An Introduction to Statistical Learning
other
Author(s):
Gareth James
,
Daniela Witten
,
Trevor Hastie
,
Robert Tibshirani
Publication date
(Print):
2013
Publisher:
Springer New York
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An Introduction to SAXS
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Book
ISBN (Print):
978-1-4614-7137-0
ISBN (Electronic):
978-1-4614-7138-7
Publication date (Print):
2013
DOI:
10.1007/978-1-4614-7138-7
SO-VID:
67d6a362-cdad-431a-8421-008d14d7a4ae
License:
http://www.springer.com/tdm
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Book chapters
pp. 1
Introduction
pp. 15
Statistical Learning
pp. 59
Linear Regression
pp. 127
Classification
pp. 175
Resampling Methods
pp. 203
Linear Model Selection and Regularization
pp. 265
Moving Beyond Linearity
pp. 303
Tree-Based Methods
pp. 337
Support Vector Machines
pp. 373
Unsupervised Learning
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