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Estimating latent variable interactions with missing data.

机译:估计与缺失数据的潜在变量交互作用。

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摘要

Investigating interaction effect is very popular in psychological research. The present study is concerned with a special kind of interaction effect, which is essentially the interaction effect between two continuous latent variables and hence is refereed to as latent variable interaction effect in this study. The goal of the present study is to investigate the estimation of such interaction effect in the context of missing data. Two estimation approaches, direct maximum likelihood and multiple imputation, are proposed for estimating such interactions with missing data. A Monte Carlo simulation study is sequentially conducted to examine the behavior of these two estimation approaches across different data distributions, sample sizes, reliabilities of measures, and missing data rates and mechanisms. Specifically, their performances are examined with respect to both parameter estimation and model fit evaluation.;To summarize the empirical findings in a succinct manner, the simulation results indicate that all of above factors affect, with varying degree, the parameter estimates and model fit statistics from both approaches. Direct maximum likelihood approach yields acceptable estimation results when the missing data are missing completely at random. It also exhibits limited robustness when the data are nonnormal and missing at random. Parameter estimates from multiple imputation approach tend to exhibit severe negative biases when the rates of missing data are high, regardless of missing data mechanism. Issues related to these findings are discussed in detail.
机译:研究交互作用在心理学研究中非常受欢迎。本研究涉及一种特殊的相互作用效应,本质上是两个连续潜在变量之间的相互作用效应,因此在本研究中被称为潜在变量相互作用效应。本研究的目的是研究在缺少数据的情况下这种相互作用的影响的估计。提出了两种估计方法,直接最大似然法和多重插补法,用于估计与缺失数据的这种相互作用。随后进行了蒙特卡洛模拟研究,以检验这两种估计方法在不同数据分布,样本大小,度量的可靠性以及丢失的数据速率和机制上的行为。具体而言,从参数估计和模型拟合评估两个方面对它们的性能进行了检查。为了简要总结经验发现,仿真结果表明上述所有因素均在不同程度上影响参数估计和模型拟合统计从这两种方法。当丢失的数据完全随机丢失时,直接最大似然法可得出可接受的估计结果。当数据不正常且随机丢失时,它也表现出有限的鲁棒性。无论丢失数据的机制如何,当丢失数据的比率很高时,来自多重插补方法的参数估计往往会表现出严重的负偏差。详细讨论了与这些发现有关的问题。

著录项

  • 作者

    Zhang, Wei.;

  • 作者单位

    University of Notre Dame.;

  • 授予单位 University of Notre Dame.;
  • 学科 Psychology Psychometrics.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 213 p.
  • 总页数 213
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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