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Nested Generalized Linear Mixed Model with Ordinal Response: Simulation and Application on Poverty Data in Java Island

机译:序列响应的嵌套广义线性混合模型:Java岛扶贫数据的仿真与应用

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The objective of this research is to build a nested generalized linear mixed model using an ordinal response variable with some covariates. There are three main jobs in this paper, i.e. parameters estimation procedure, simulation, and implementation of the model for the real data. At the part of parameters estimation procedure, concepts of threshold, nested random effect, and computational algorithm are described. The simulations data are built for 3 conditions to know the effect of different parameter values of random effect distributions. The last job is the implementation of the model for the data about poverty in 9 districts of Java Island. The districts are Kuningan, Karawang, and Majalengka chose randomly in West Java; Temanggung, Boyolali, and Cilacap from Central Java; and Blitar, Ngawi, and Jember from East Java. The covariates in this model are province, number of bad nutrition cases, number of farmer families, and number of health personnel. In this modeling, all covariates are grouped as ordinal scale. Unit observation in this research is sub-district (kecamatan) nested in district, and districts (kabupaten) are nested in province. For the result of simulation, ARB (Absolute Relative Bias) and RRMSE (Relative Root of mean square errors) scale is used. They show that prov parameters have the highest bias, but more stable RRMSE in all conditions. The simulation design needs to be improved by adding other condition, such as higher correlation between covariates. Furthermore, as the result of the model implementation for the data, only number of farmer family and number of medical personnel have significant contributions to the level of poverty in Central Java and East Java province, and only district 2 (Karawang) of province 1 (West Java) has different random effect from the others. The source of the data is PODES (Potensi Desa) 2008 from BPS (Badan Pusat Statistik).
机译:该研究的目的是使用阶数响应变量与一些协变量构建嵌套的广义线性混合模型。本文有三个主要工作,即参数估计过程,模拟和实际数据模型的实现。参数估计过程的部分,描述了阈值,嵌套随机效应和计算算法的概念。模拟数据是为3条条件构建的,以了解随机效应分布的不同参数值的效果。最后一份工作是在Java岛9区的贫困数据模型的实施。该地区是Kuningan,Karawang,MajaLengka在西爪哇队随机选择;来自Central Java的Temanggung,Boyolali和Cilacap;和闪亮石,尼加尔和九月到东爪哇省。该模型的协调因子是省份,营养案件不良,农民家庭数量,以及卫生人才数量。在这种建模中,所有协变量都被分组为序数尺度。本研究的单位观察是嵌套在地区的次区(kecamatan),地区(Kabupaten)嵌套在省。对于模拟结果,使用ARB(绝对相对偏置)和RRMSE(均方误差的相对根)。他们表明,PES参数具有最高的偏差,但在所有条件下都有更稳定的RRMSE。通过添加其他条件,需要改善模拟设计,例如协变量之间的更高的相关性。此外,由于数据的模型实施的结果,只有农民家庭和医务人员数量的数量对中爪哇省和东爪哇省的贫困水平以及省份的唯一(Karawang)有重大贡献1(西爪哇省)对其他人有不同的随机效果。数据来源是来自BPS(巴丹Pusat Statistik)的Pocies(Potensi Desa)。

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