Recursive Partitioning and Applications

Recursive Partitioning and Applications

EnglishHardbackPrint on demand
Zhang Heping
Springer-Verlag New York Inc.
EAN: 9781441968234
Print on demand
Delivery on Friday, 14. of February 2025
CZK 2,896
Common price CZK 3,218
Discount 10%
pc
Do you want this product today?
Oxford Bookshop Praha Korunní
not available
Librairie Francophone Praha Štěpánská
not available
Oxford Bookshop Ostrava
not available
Oxford Bookshop Olomouc
not available
Oxford Bookshop Plzeň
not available
Oxford Bookshop Brno
not available
Oxford Bookshop Hradec Králové
not available
Oxford Bookshop České Budějovice
not available
Oxford Bookshop Liberec
not available

Detailed information

Multiple complex pathways, characterized by interrelated events and c- ditions, represent routes to many illnesses, diseases, and ultimately death. Although there are substantial data and plausibility arguments suppo- ing many conditions as contributory components of pathways to illness and disease end points, we have, historically, lacked an e?ective method- ogy for identifying the structure of the full pathways. Regression methods, with strong linearity assumptions and data-basedconstraints onthe extent and order of interaction terms, have traditionally been the strategies of choice for relating outcomes to potentially complex explanatory pathways. However, nonlinear relationships among candidate explanatory variables are a generic feature that must be dealt with in any characterization of how health outcomes come about. It is noteworthy that similar challenges arise from data analyses in Economics, Finance, Engineering, etc. Thus, the purpose of this book is to demonstrate the e?ectiveness of a relatively recently developed methodology—recursive partitioning—as a response to this challenge. We also compare and contrast what is learned via rec- sive partitioning with results obtained on the same data sets using more traditional methods. This serves to highlight exactly where—and for what kinds of questions—recursive partitioning–based strategies have a decisive advantage over classical regression techniques.
EAN 9781441968234
ISBN 1441968237
Binding Hardback
Publisher Springer-Verlag New York Inc.
Publication date July 19, 2010
Pages 262
Language English
Dimensions 235 x 155
Country United States
Readership Professional & Scholarly
Authors Singer Burton H.; Zhang Heping
Illustrations XIV, 262 p.
Edition 2nd ed. 2010
Series Springer Series in Statistics