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Classification And Regression Trees
other
Author(s):
Leo Breiman
,
Jerome H. Friedman
,
Richard A. Olshen
,
Charles J. Stone
Publication date
(Online):
October 19 2017
Publisher:
Routledge
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ISBN (Electronic):
9781315139470
Publication date (Online):
October 19 2017
DOI:
10.1201/9781315139470
SO-VID:
32b6b367-3d62-4d3d-a62f-46a6327a9b01
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Book chapters
pp. 1
Background
pp. 18
Introduction To Tree Classification
pp. 59
Right Sized Trees and Honest Estimates
pp. 93
Splitting Rules
pp. 130
Strengthening and Interpreting
pp. 174
Medical Diagnosis and Prognosis
pp. 203
Mass Spectra Classification
pp. 216
Regression Trees
pp. 266
Bayes Rules and Partitions
pp. 279
Optimal Pruning
pp. 297
Construction of Trees from a Learning Sample
pp. 318
Consistency
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