ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATA

Logistic regression (LR) is a model that associates the relationship between category-type response variables with quantitative or quantitative and qualitative predictor variables.  The prediction of the LR model is in the form of probability.  This research studied logistic regression (LR) models a...

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Main Authors: Jajang Jajang, Nunung Nurhayati, Suci Jena Mufida
Format: Article
Language:English
Published: Universitas Pattimura 2022-03-01
Series:Barekeng
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Online Access:https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/4272
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author Jajang Jajang
Nunung Nurhayati
Suci Jena Mufida
author_facet Jajang Jajang
Nunung Nurhayati
Suci Jena Mufida
author_sort Jajang Jajang
collection DOAJ
description Logistic regression (LR) is a model that associates the relationship between category-type response variables with quantitative or quantitative and qualitative predictor variables.  The prediction of the LR model is in the form of probability.  This research studied logistic regression (LR) models and Classification Trees in the case of ordinal response variable types.   The data used in this research from The Central Statistics Agency (BPS).  The research variables used are Human Development Index (HDI), gross enrollment rate for high school, percentage of poor people, open unemployment, and percentage of married age <17 years and some of the related predictor variables in Central Java Province in 2018.  The HDI data is categorized into three levels, namely very high, high, and moderate. The results of the ordinal LR model show that there are three factors that influence the HDI, they are the gross enrollment rate for high school (GER), the percentage of the poor, and the proportion of women who married at the age of less than 17 years. Comparison of the accuracy LR model and Classification Tree in classification analysis shows that if the training data used is 60%-70% the LR model is better than Classification Tree, while the training data used is more than 70% and less than 86% then the Classification Tree model is better than LR.
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institution Kabale University
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language English
publishDate 2022-03-01
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spelling doaj-art-ac3d094d7ef94fd49d55ececbe3f849d2025-08-20T03:36:12ZengUniversitas PattimuraBarekeng1978-72272615-30172022-03-0116107508210.30598/barekengvol16iss1pp075-0824272ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATAJajang Jajang0Nunung Nurhayati1Suci Jena Mufida2Department of Mathematics, Faculty of Mathematics and Natural Sciences, Jenderal Soedirman UniversityDepartment of Mathematics, Faculty of Mathematics and Natural Sciences, Jenderal Soedirman UniversityDepartment of Mathematics, Faculty of Mathematics and Natural Sciences, Jenderal Soedirman UniversityLogistic regression (LR) is a model that associates the relationship between category-type response variables with quantitative or quantitative and qualitative predictor variables.  The prediction of the LR model is in the form of probability.  This research studied logistic regression (LR) models and Classification Trees in the case of ordinal response variable types.   The data used in this research from The Central Statistics Agency (BPS).  The research variables used are Human Development Index (HDI), gross enrollment rate for high school, percentage of poor people, open unemployment, and percentage of married age <17 years and some of the related predictor variables in Central Java Province in 2018.  The HDI data is categorized into three levels, namely very high, high, and moderate. The results of the ordinal LR model show that there are three factors that influence the HDI, they are the gross enrollment rate for high school (GER), the percentage of the poor, and the proportion of women who married at the age of less than 17 years. Comparison of the accuracy LR model and Classification Tree in classification analysis shows that if the training data used is 60%-70% the LR model is better than Classification Tree, while the training data used is more than 70% and less than 86% then the Classification Tree model is better than LR.https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/4272human development indexordinal logistic modelclassification tree
spellingShingle Jajang Jajang
Nunung Nurhayati
Suci Jena Mufida
ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATA
Barekeng
human development index
ordinal logistic model
classification tree
title ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATA
title_full ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATA
title_fullStr ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATA
title_full_unstemmed ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATA
title_short ORDINAL LOGISTIC REGRESSION MODEL AND CLASSIFICATION TREE ON ORDINAL RESPONSE DATA
title_sort ordinal logistic regression model and classification tree on ordinal response data
topic human development index
ordinal logistic model
classification tree
url https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/4272
work_keys_str_mv AT jajangjajang ordinallogisticregressionmodelandclassificationtreeonordinalresponsedata
AT nunungnurhayati ordinallogisticregressionmodelandclassificationtreeonordinalresponsedata
AT sucijenamufida ordinallogisticregressionmodelandclassificationtreeonordinalresponsedata