The Effect of Sample Size on Random Component in Multilevel Modeling

Asadullah, M. Husain
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Abstract

In cluster-correlated data arise when there exists any condition for that individual are grouped among themselves. Data of this kind arise frequently in social science, behavioral, and medical sciences since individuals can be grouped in so many different ways. Multilevel modeling (MLM) is an approach that can be used to handle cluster or grouped data. Analyzing of correlated data is different from the usual way for independent data since we have to consider the correlation structure among individuals within cluster. In random effects models’ correlation structure can be estimated by considering the models parameters are allowed to vary across the cluster. Random effect models have two components, within cluster components, cluster-specific response is described by a regression model with a population-level intercept and slope, other is between-cluster component: variation in cluster-intercepts and slopes is captured. In a multilevel model, cluster level variance component is more affected by no. of cluster as well as cluster size. So, this is important to aware the researcher about no. of cluster and cluster size in estimating the random components of random effect models for correlated continuous and discrete outcome respectively in MLM since it produces bias estimate for few no. of cluster and cluster size. The parameters of random effects models can be estimated by Maximum Likelihood and Restricted Maximum Likelihood (REML) estimation for correlated continuous outcome, on the contrast besides REML, Penalized Quassi Likelihood (PQL) and Adaptive Gaussian Quadrature (AGQ) estimation techniques are applied for correlated discrete outcome. In this thesis, using the simulation procedure we would be compared among these estimation techniques by exploring the influence of no. of cluster and cluster size on estimated random parameters from random effect models of two-level and three levels for continuous and discrete outcome respectively. Relative bias, mean square error and coverage probability would be used for comparison purpose among the estimation techniques.
多层模型中样本量对随机分量的影响
在集群中,当存在个体被分组的任何条件时,就会出现相关数据。这类数据经常出现在社会科学、行为科学和医学科学中,因为个体可以以许多不同的方式分组。多层建模(MLM)是一种可用于处理集群或分组数据的方法。对相关数据的分析不同于对独立数据的分析,因为我们必须考虑集群内个体之间的关联结构。在随机效应模型中,考虑到模型参数允许在整个集群中变化,可以估计模型的相关结构。随机效应模型有两个组成部分,在集群组成部分中,集群特定响应由具有种群水平截距和斜率的回归模型描述,另一个是集群之间的组成部分:捕获集群截距和斜率的变化。在多层模型中,聚类水平方差分量受no的影响较大。以及簇的大小。所以,让研究人员知道no是很重要的。在MLM中,对相关连续和离散结果的随机效应模型的随机成分分别进行估计时,聚类和聚类大小会产生偏差估计。簇和簇大小。随机效应模型的参数可以通过最大似然和限制最大似然(REML)估计来估计相关连续结果,而相关离散结果除了REML估计之外,还可以采用惩罚拟似然(PQL)和自适应高斯正交(AGQ)估计技术。在本文中,我们将使用仿真程序,通过探索no的影响来比较这些估计技术。对连续和离散结果分别从二水平和三水平随机效应模型估计的随机参数的聚类和聚类大小。相对偏差,均方误差和覆盖概率将用于估计技术之间的比较目的。
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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