Nonparametric bootstrapping for multiple logistic regression model using R

Article


Hossain, A. and Khan, H. 2004. Nonparametric bootstrapping for multiple logistic regression model using R. BRAC University Journal. 1 (2), pp. 109-113.
TypeArticle
TitleNonparametric bootstrapping for multiple logistic regression model using R
AuthorsHossain, A. and Khan, H.
Abstract

The use of explanatory variables or covariates in a regression model is an important way to represent heterogeneity in a population. Again bootstrapping is rapidly becoming a popular tool to apply in a broad range of standard applications including multiple regressions. The nonparametric bootstrap allows us to estimate the sampling distribution of a statistic empirically without making assumptions about the form of the population, and without deriving the sampling distribution explicitly. The main objective of this study to discuss the nonparametric bootstrapping procedure for multiple logistic regression model associated with Davidson and Hinkley's (1997) "boot" library in R.

LanguageEnglish
PublisherBRAC University
JournalBRAC University Journal
Publication dates
Print01 Jan 2004
Publication process dates
Deposited02 Feb 2010
Output statusPublished
Web address (URL)http://dspace.bracu.ac.bd/bitstream/handle/10361/179/Nonparametric%20bootstrapping%20for%20multiple%20logistics%20regression%20model%20using%20R.pdf;jsessionid=1F34B61E82B117F2C61984C3CAE4B6AD?sequence=1
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