ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)

Weighted Logistic Regression (WLR) is a method used to overcome imbalanced data or rare events by using weighting and is part of the development of a simple logistic regression model. Parameter estimation of the WLR model uses Maximum Likelihood estimation. The maximum likelihood parameter estimator...

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Main Authors: Dahlia Gladiola Rurina Menufandu, Rahma Fitriani, Eni Sumarminingsih
Format: Article
Language:English
Published: Universitas Pattimura 2023-04-01
Series:Barekeng
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Online Access:https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/7633
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author Dahlia Gladiola Rurina Menufandu
Rahma Fitriani
Eni Sumarminingsih
author_facet Dahlia Gladiola Rurina Menufandu
Rahma Fitriani
Eni Sumarminingsih
author_sort Dahlia Gladiola Rurina Menufandu
collection DOAJ
description Weighted Logistic Regression (WLR) is a method used to overcome imbalanced data or rare events by using weighting and is part of the development of a simple logistic regression model. Parameter estimation of the WLR model uses Maximum Likelihood estimation. The maximum likelihood parameter estimator value is obtained using an optimization approach.  The Genetic algorithm is an optimization computational algorithm that is used to optimize the estimation of model parameters. This study aims to estimate the Maximum Likelihood Weighted Logistic Regression with the applied genetic algorithm and determine the significant variables that affect the working status of individuals in Malang City. The data used is the result of data collection from the National Labor Force Survey of Malang City in 2020. The results of the analysis show that the variable education completed and the number of household members has a significant effect on individual work status in Malang City.
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id doaj-art-dac31f84d9874600b68675b0f6e7f33d
institution Kabale University
issn 1978-7227
2615-3017
language English
publishDate 2023-04-01
publisher Universitas Pattimura
record_format Article
series Barekeng
spelling doaj-art-dac31f84d9874600b68675b0f6e7f33d2025-08-20T04:00:56ZengUniversitas PattimuraBarekeng1978-72272615-30172023-04-011710487049410.30598/barekengvol17iss1pp0487-04947633ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)Dahlia Gladiola Rurina Menufandu0Rahma Fitriani1Eni Sumarminingsih2Departemen of Statistics, Faculty of Mathematics and Natural Sciences, Brawijaya University, IndonesiaDepartemen of Statistics, Faculty of Mathematics and Natural Sciences, Brawijaya University, IndonesiaDepartemen of Statistics, Faculty of Mathematics and Natural Sciences, Brawijaya University, IndonesiaWeighted Logistic Regression (WLR) is a method used to overcome imbalanced data or rare events by using weighting and is part of the development of a simple logistic regression model. Parameter estimation of the WLR model uses Maximum Likelihood estimation. The maximum likelihood parameter estimator value is obtained using an optimization approach.  The Genetic algorithm is an optimization computational algorithm that is used to optimize the estimation of model parameters. This study aims to estimate the Maximum Likelihood Weighted Logistic Regression with the applied genetic algorithm and determine the significant variables that affect the working status of individuals in Malang City. The data used is the result of data collection from the National Labor Force Survey of Malang City in 2020. The results of the analysis show that the variable education completed and the number of household members has a significant effect on individual work status in Malang City.https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/7633genetic algorithmweighted logistic regression
spellingShingle Dahlia Gladiola Rurina Menufandu
Rahma Fitriani
Eni Sumarminingsih
ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)
Barekeng
genetic algorithm
weighted logistic regression
title ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)
title_full ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)
title_fullStr ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)
title_full_unstemmed ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)
title_short ESTIMATION OF MAXIMUM LIKELIHOOD WEIGHTED LOGISTIC REGRESSION USING GENETIC ALGORITHM (CASE STUDY: INDIVIDUAL WORK STATUS IN MALANG CITY)
title_sort estimation of maximum likelihood weighted logistic regression using genetic algorithm case study individual work status in malang city
topic genetic algorithm
weighted logistic regression
url https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/7633
work_keys_str_mv AT dahliagladiolarurinamenufandu estimationofmaximumlikelihoodweightedlogisticregressionusinggeneticalgorithmcasestudyindividualworkstatusinmalangcity
AT rahmafitriani estimationofmaximumlikelihoodweightedlogisticregressionusinggeneticalgorithmcasestudyindividualworkstatusinmalangcity
AT enisumarminingsih estimationofmaximumlikelihoodweightedlogisticregressionusinggeneticalgorithmcasestudyindividualworkstatusinmalangcity