Pemodelan angka kematian bayi di Indonesia menggunakan Geographically Weighted Regression (GWR) dan Mixed Geographically Weighted Regression (MGWR)

Muhammad Marizal, Kartika Anjani Monalisa
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Abstract

The Infant Mortality Rate (IMR) is fundamental indicator that reflects the health status in the surrounding community. The Infant Mortality Rate is still categorized as high in Indonesia. Therefore, this study aims to determine the appropriate model in estimating the Infant Mortality Rate (IMR) and to find out the factors that influence the IMR in Indonesia. The data in this study was secondary which obtained from the Indonesia Health Profile. The estimation was carried out using Geograpically Weigthed Regression (GWR) and Mixed Geographically Weigthed Regression (MGWR) models. The GWR model is development of regression that consider spatial factors. While the MGWR model is a combination of regression and GWR with several variables influence locally. but the rest goes globally. The result showed that the MGWR model was the best model compared to the GWR model with the lowest AIC value selection standart. The MGWR model with weighted Adactive Kernel Gaussian found that locally influencing factors were infants who were exclusively breastfed (ASI) and infants who received early initiation of breastfeeding (IMD), while globally influencing factors were infants who were given vitamin A, low birth weight (LBW) delivery services at health facilities and pregnant women receiving bloodsupplementing tables (TTD). Keywords: Adaptive of kernel Gaussian, AIC, the infant mortality rate, GWR, MGWR MSC2020: 62M10
婴儿死亡率(IMR)是反映周边社区健康状况的基本指标。在印度尼西亚,婴儿死亡率仍然属于高水平。因此,本研究旨在确定估算婴儿死亡率(IMR)的适当模型,并找出影响印度尼西亚婴儿死亡率的因素。本研究的数据是从印度尼西亚健康概况获得的二手数据。采用地理加权回归(GWR)和混合地理加权回归(MGWR)模型进行估计。GWR模型是考虑空间因素的回归模型的发展。而MGWR模型是回归和GWR的结合,具有多个变量的局部影响。但其余的流向了全球。结果表明,与AIC值选择标准最低的GWR模型相比,MGWR模型是最佳模型。加权自适应核高斯的MGWR模型发现,局部影响因素是纯母乳喂养的婴儿(ASI)和早期开始母乳喂养的婴儿(IMD),而全球影响因素是给予维生素A的婴儿,卫生机构的低出生体重(LBW)分娩服务和接受补血表的孕妇(TTD)。关键词:核高斯自适应,AIC,婴儿死亡率,GWR, MGWR
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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