Re-sampling in Linear Regression Model Using Jackknife and Bootstrap

Statistical inference is based generally on some estimates that are functions of the data. Resampling methods offer strategies to estimate or approximate the sampling distribution of a statistic. In this article, two resampling methods are studied, jackknife and bootstrap, where the main objective i...

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Main Authors: Zakariya Y. Algamal, Khairy B. Rasheed
Format: Article
Language:Arabic
Published: College of Computer Science and Mathematics, University of Mosul 2010-12-01
Series:المجلة العراقية للعلوم الاحصائية
Online Access:https://stats.mosuljournals.com/article_28450_c3732e5fefaa59dec7fa9b836d1afea3.pdf
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author Zakariya Y. Algamal
Khairy B. Rasheed
author_facet Zakariya Y. Algamal
Khairy B. Rasheed
author_sort Zakariya Y. Algamal
collection DOAJ
description Statistical inference is based generally on some estimates that are functions of the data. Resampling methods offer strategies to estimate or approximate the sampling distribution of a statistic. In this article, two resampling methods are studied, jackknife and bootstrap, where the main objective is to examine the accuracy of these methods in estimating the distribution of the regression parameters through different sample sizes and different bootstrap replications. Keywords: Jackknife, Bootstrap, Multiple regression, Bias , Variance.
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spelling doaj.art-0d06f68d7b26401ab438e78fd384e0b32022-12-22T03:30:07ZaraCollege of Computer Science and Mathematics, University of Mosulالمجلة العراقية للعلوم الاحصائية1680-855X2664-29562010-12-01102597310.33899/iqjoss.2010.2845028450Re-sampling in Linear Regression Model Using Jackknife and BootstrapZakariya Y. AlgamalKhairy B. RasheedStatistical inference is based generally on some estimates that are functions of the data. Resampling methods offer strategies to estimate or approximate the sampling distribution of a statistic. In this article, two resampling methods are studied, jackknife and bootstrap, where the main objective is to examine the accuracy of these methods in estimating the distribution of the regression parameters through different sample sizes and different bootstrap replications. Keywords: Jackknife, Bootstrap, Multiple regression, Bias , Variance.https://stats.mosuljournals.com/article_28450_c3732e5fefaa59dec7fa9b836d1afea3.pdf
spellingShingle Zakariya Y. Algamal
Khairy B. Rasheed
Re-sampling in Linear Regression Model Using Jackknife and Bootstrap
المجلة العراقية للعلوم الاحصائية
title Re-sampling in Linear Regression Model Using Jackknife and Bootstrap
title_full Re-sampling in Linear Regression Model Using Jackknife and Bootstrap
title_fullStr Re-sampling in Linear Regression Model Using Jackknife and Bootstrap
title_full_unstemmed Re-sampling in Linear Regression Model Using Jackknife and Bootstrap
title_short Re-sampling in Linear Regression Model Using Jackknife and Bootstrap
title_sort re sampling in linear regression model using jackknife and bootstrap
url https://stats.mosuljournals.com/article_28450_c3732e5fefaa59dec7fa9b836d1afea3.pdf
work_keys_str_mv AT zakariyayalgamal resamplinginlinearregressionmodelusingjackknifeandbootstrap
AT khairybrasheed resamplinginlinearregressionmodelusingjackknifeandbootstrap