ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL

Correlation between a categorical response variable and one or several predictor variables involving large samples is analyzed using logistic regression method. However, if the sample size is small or the data is sparse, the relevance of conventional (asymptotic) logistic regression method to use in...

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主要作者: ISNAWATI, 090013943 M
格式: Theses and Dissertations NonPeerReviewed
語言:Indonesian
Indonesian
出版: 2002
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spelling id-langga.357852017-07-02T22:11:37Z http://repository.unair.ac.id/35785/ ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL ISNAWATI, 090013943 M QA319-329 Functional Analysis Correlation between a categorical response variable and one or several predictor variables involving large samples is analyzed using logistic regression method. However, if the sample size is small or the data is sparse, the relevance of conventional (asymptotic) logistic regression method to use in such correlation analysis will be questioned. This is a statistical study for application of exact logistic regression in the condition of small sample size and sparse data. Exact logistic regression analysis was done to cases with sample size of 10, 20, 29, and 55 taken from results of random sampling data obtained by Immunization. The dependent variable was immunization status, and the independent variable was people's exposure to information, education, occupation, living children, knowledge, attitude and participation. The data were analyzed with Logxact Turbo program. Results showed that parameter estimation and hypothesis test using exact test provided better solution compared to conventional (asymptotic) regression test such as likelihood ratio, Wald, and score tests. Exact test also provided correlation type or model with sample size of 20, 30, and 55 and wider confidence interval compared to asymptotic inference type. Probability between those intervals had, therefore, larger parameter of population. For tests involving numerous independent variables, exact logistic regression method also provided better solution compared to three conventional (asymptotic) logistic regression tests. Exact logistic regression method should be used in statistical test with small sample size or sparse data and tests that use table with sparse value in each of its cells. 2002 Thesis NonPeerReviewed text id http://repository.unair.ac.id/35785/1/gdlhub-gdl-s2-2006-isnawati-708-tkm_04-03.pdf text id http://repository.unair.ac.id/35785/12/35785.pdf ISNAWATI, 090013943 M (2002) ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL. Thesis thesis, UNIVERSITAS AIRLANGGA. http://lib.unair.ac.id
institution Universitas Airlangga
building Universitas Airlangga Library
country Indonesia
collection UNAIR Repository
language Indonesian
Indonesian
topic QA319-329 Functional Analysis
spellingShingle QA319-329 Functional Analysis
ISNAWATI, 090013943 M
ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL
description Correlation between a categorical response variable and one or several predictor variables involving large samples is analyzed using logistic regression method. However, if the sample size is small or the data is sparse, the relevance of conventional (asymptotic) logistic regression method to use in such correlation analysis will be questioned. This is a statistical study for application of exact logistic regression in the condition of small sample size and sparse data. Exact logistic regression analysis was done to cases with sample size of 10, 20, 29, and 55 taken from results of random sampling data obtained by Immunization. The dependent variable was immunization status, and the independent variable was people's exposure to information, education, occupation, living children, knowledge, attitude and participation. The data were analyzed with Logxact Turbo program. Results showed that parameter estimation and hypothesis test using exact test provided better solution compared to conventional (asymptotic) regression test such as likelihood ratio, Wald, and score tests. Exact test also provided correlation type or model with sample size of 20, 30, and 55 and wider confidence interval compared to asymptotic inference type. Probability between those intervals had, therefore, larger parameter of population. For tests involving numerous independent variables, exact logistic regression method also provided better solution compared to three conventional (asymptotic) logistic regression tests. Exact logistic regression method should be used in statistical test with small sample size or sparse data and tests that use table with sparse value in each of its cells.
format Theses and Dissertations
NonPeerReviewed
author ISNAWATI, 090013943 M
author_facet ISNAWATI, 090013943 M
author_sort ISNAWATI, 090013943 M
title ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL
title_short ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL
title_full ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL
title_fullStr ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL
title_full_unstemmed ANALISIS REGRESI LOGISTIK EKSAK PADA PENANGANAN SAMPEL KECIL
title_sort analisis regresi logistik eksak pada penanganan sampel kecil
publishDate 2002
url http://repository.unair.ac.id/35785/1/gdlhub-gdl-s2-2006-isnawati-708-tkm_04-03.pdf
http://repository.unair.ac.id/35785/12/35785.pdf
http://repository.unair.ac.id/35785/
http://lib.unair.ac.id
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