Extended Rank Analysis of Covariance Considering Local Correlations

碩士 === 淡江大學 === 數學學系 === 93 === In practice such as clinical trials,we often need to compare differences between two treatments groups.If,in addition,there is covariable(s) associated with the response of interest,then we can make use of them to perform an analysis of covariance (ANCOVA) to remove b...

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Main Authors: Chieh-Ting Lin, 林玠廷
Other Authors: Chu-Chin Chen
Format: Others
Language:zh-TW
Published: 2005
Online Access:http://ndltd.ncl.edu.tw/handle/08638015697686813194
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spelling ndltd-TW-093TKU004790022015-10-13T15:28:55Z http://ndltd.ncl.edu.tw/handle/08638015697686813194 Extended Rank Analysis of Covariance Considering Local Correlations 考慮局部相關係數之廣義排序共變數分析 Chieh-Ting Lin 林玠廷 碩士 淡江大學 數學學系 93 In practice such as clinical trials,we often need to compare differences between two treatments groups.If,in addition,there is covariable(s) associated with the response of interest,then we can make use of them to perform an analysis of covariance (ANCOVA) to remove bias and to enhance efficiency.The most common parametric ANCOVA is by linear regression approach with strict model assumptions.For nonparametric ANCOVA,two commonly approaches are ANCOVA by ranking(e.g. Quade,1967) and ANOCOVA by matching(e.g. Quade, 1982). Extended Rank Analysis of Covariance (ERMP ANCOVA,Chen,2001),which combines the rank ANCOVA and the ANCOVA by matching,uses “rank corrected for mean” and “caliper matching” to adjust for the ranks of the covariates.So that the assumptions are weaker than the rank ANCOVA and does not throw away valuable information.However,tolerance may be conservative,and if the trend between Y and X is inconsistent,the test statistic may not be efficient. In the thesis,based on the notion of local correlations(Doksum.et al,1994),we divide the support of X into several sections according to variations of correlations between Y and X,then use nonparametric smoothing regression to estimate the conditional mean of Y given X.Given the estimates,we then calculate the corresponding tolerance of each X for their extended ranks of the ERMP test. We compare the p-values of the ERMP ANCOVA and combinations of ERMP based on separate sections by two examples.We found that the results of the proposed method are slightly better than the ERMP ANCOVA for the examined examples. Chu-Chin Chen 陳主智 2005 學位論文 ; thesis 37 zh-TW
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description 碩士 === 淡江大學 === 數學學系 === 93 === In practice such as clinical trials,we often need to compare differences between two treatments groups.If,in addition,there is covariable(s) associated with the response of interest,then we can make use of them to perform an analysis of covariance (ANCOVA) to remove bias and to enhance efficiency.The most common parametric ANCOVA is by linear regression approach with strict model assumptions.For nonparametric ANCOVA,two commonly approaches are ANCOVA by ranking(e.g. Quade,1967) and ANOCOVA by matching(e.g. Quade, 1982). Extended Rank Analysis of Covariance (ERMP ANCOVA,Chen,2001),which combines the rank ANCOVA and the ANCOVA by matching,uses “rank corrected for mean” and “caliper matching” to adjust for the ranks of the covariates.So that the assumptions are weaker than the rank ANCOVA and does not throw away valuable information.However,tolerance may be conservative,and if the trend between Y and X is inconsistent,the test statistic may not be efficient. In the thesis,based on the notion of local correlations(Doksum.et al,1994),we divide the support of X into several sections according to variations of correlations between Y and X,then use nonparametric smoothing regression to estimate the conditional mean of Y given X.Given the estimates,we then calculate the corresponding tolerance of each X for their extended ranks of the ERMP test. We compare the p-values of the ERMP ANCOVA and combinations of ERMP based on separate sections by two examples.We found that the results of the proposed method are slightly better than the ERMP ANCOVA for the examined examples.
author2 Chu-Chin Chen
author_facet Chu-Chin Chen
Chieh-Ting Lin
林玠廷
author Chieh-Ting Lin
林玠廷
spellingShingle Chieh-Ting Lin
林玠廷
Extended Rank Analysis of Covariance Considering Local Correlations
author_sort Chieh-Ting Lin
title Extended Rank Analysis of Covariance Considering Local Correlations
title_short Extended Rank Analysis of Covariance Considering Local Correlations
title_full Extended Rank Analysis of Covariance Considering Local Correlations
title_fullStr Extended Rank Analysis of Covariance Considering Local Correlations
title_full_unstemmed Extended Rank Analysis of Covariance Considering Local Correlations
title_sort extended rank analysis of covariance considering local correlations
publishDate 2005
url http://ndltd.ncl.edu.tw/handle/08638015697686813194
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