MODELING COUNT DATA WITH OVER-DISPERSION USING GENERALIZED POISSON REGRESSION: A CASE STUDY OF LOW BIRTH WEIGHT IN INDONESIA

M. Fathurahman
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Abstract

Poisson regression is commonly used in modeling count data in various research fields. An essential assumption must be met when using Poisson regression, which is that the count data of the response has the mean and variance must be equal, namely equi-dispersion. This assumption is often unmet because many data for the response that the variance is greater than the mean, called over-dispersion. If the Poisson regression model contains the over-dispersion, then will be produced an invalid model can under-estimate standard errors and misleading inference for regression parameters. Therefore, an approach is needed to overcome the over-dispersion problem in Poisson regression. The generalized Poisson regression can handle the over-dispersion in Poisson regression. This study aims to obtain the generalized Poisson regression model and the factors affecting the low birth weight in Indonesia in 2021. The result shows that the factors affecting the low birth weight in Indonesia based on the generalized Poisson regression model were: poverty rate, percentage of households with access to appropriate sanitation, percentage of pregnant women at risk of chronic energy deficiency receiving additional food, percentage of pregnant women who received blood-boosting tablets, and percentage of antenatal care.
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用广义泊松回归对过度分散的计数数据建模:以印度尼西亚低出生体重为例
泊松回归是各种研究领域中常用的计数数据建模方法。在使用泊松回归时,必须满足一个基本假设,即响应的计数数据具有均值,方差必须相等,即等分散。这种假设往往不满足,因为许多数据对于响应的方差大于平均值,称为过分散。如果泊松回归模型中含有过分散,则会产生无效的模型,可以低估标准误差和对回归参数的误导性推断。因此,需要一种方法来克服泊松回归中的过分散问题。广义泊松回归可以处理泊松回归中的过色散问题。本研究旨在获得2021年印度尼西亚低出生体重的广义泊松回归模型和影响因素。结果表明,根据广义泊松回归模型,影响印度尼西亚低出生体重的因素是:贫困率、获得适当卫生设施的家庭百分比、有慢性能量缺乏风险的孕妇获得额外食物的百分比、孕妇获得补血片的百分比和产前保健的百分比。
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MODELING COUNT DATA WITH OVER-DISPERSION USING GENERALIZED POISSON REGRESSION: A CASE STUDY OF LOW BIRTH WEIGHT IN INDONESIA AUXILIARY INFORMATION BASED GENERALLY WEIGHTED MOVING AVERAGE FOR PROCESS MEAN ANALYSIS OF THE EFFECT TOURISM SECTOR AND OPEN UNEMPLOYMENT ON ECONOMIC GROWTH IN BALI PROVINCE FORECASTING THE NUMBER OF PASSENGER AT JENDERAL AHMAD YANI SEMARANG INTERNATIONAL AIRPORT USING HYBRID SINGULAR SPECTRUM ANALYSIS-NEURAL NETWORK (SSA-NN) METHOD FOURIER SERIES APPLICATION FOR MODELING “CHOCOLATE” KEYWORD SEARCH TRENDS IN GOOGLE TRENDS DATA
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