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首页> 外文期刊>Communications in Statistics >Fitting Variance Components Model and Fixed Effects Model for One-Way Analysis of Variance to Complex Survey Data
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Fitting Variance Components Model and Fixed Effects Model for One-Way Analysis of Variance to Complex Survey Data

机译:拟合方差成分模型和固定效应模型以对复杂调查数据进行方差单向分析

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摘要

Under complex survey sampling, in particular when selection probabilities depend on the response variable (informative sampling), the sample and population distributions are different, possibly resulting in selection bias. This article is concerned with this problem by fitting two statistical models, namely: the variance components model (a two-stage model) and the fixed effects model (a single-stage model) for one-way analysis of variance, under complex survey design, for example, two-stage sampling, stratification, and unequal probability of selection, etc. classical theory underlying the use of the two-stage model involves simple random sampling for each of the two stages. In such cases the model in the sample, after sample selection, is the same as model for the population;before sample selection. When the selection probabilities are related to the values of the response variable, standard estimates of the population model parameters may be severely biased, leading possibly to false inference. The idea behind the approach is to extract the model holding for the sample data as a function of the model in the population and of the first order inCIusion probabilities. And then fit the sample model, using analysis of variance, maximum likelihood, and pseudo maximum likelihood methods of estimation. The main feature of the proposed techniques is related to their behavior in terms of the informativeness parameter. We also show that the use of the population model that ignores the informative sampling design, yields biased model fitting.
机译:在复杂调查抽样下,尤其是当选择概率取决于响应变量(信息抽样)时,样本和总体分布是不同的,可能会导致选择偏差。本文通过拟合两个统计模型来解决这个问题,这两个模型是:在复杂调查设计下,用于方差单向分析的方差分量模型(两阶段模型)和固定效应模型(单阶段模型)。例如,两阶段抽样,分层和不等选择概率等。使用两阶段模型的经典理论涉及到两个阶段中每个阶段的简单随机抽样。在这种情况下,样本选择后样本中的模型与总体模型相同;样本选择前。当选择概率与响应变量的值相关时,总体模型参数的标准估计值可能会严重偏差,从而可能导致错误的推断。该方法背后的思想是提取样本数据的保存模型,该模型是总体中的模型和推理概率的一阶函数。然后使用方差分析,最大似然和伪最大似然估计方法拟合样本模型。所提出技术的主要特征与它们在信息性参数方面的行为有关。我们还表明,忽略人口信息模型设计的总体模型的使用会产生有偏差的模型拟合。

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