John J Dziak, Bethany C Bray, Jieting Zhang, Minqiang Zhang, Stephanie T Lanza
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引用次数: 54
摘要
在潜在特征分析(LPA)中,有几种方法可用于估计潜在类别隶属度与远端结果的关系。通常使用三步方法,但存在估计偏差和置信区间覆盖的问题。提出的改进方法包括Bolck, Croon, and Hagenaars (BCH)的校正方法;2004),佛蒙特(2010)的最大似然(ML)方法,以及Bray, Lanza, & Tan(2015)的包容性三步方法。这些方法已经在具有分类指标的潜在类分析(LCA)的相关案例中进行了研究,但对于具有连续指标的潜在类分析(LPA)的研究还不够。我们在远端结果分布、类别测量质量、相对潜在类别大小以及潜在类别与远端结果之间的关联强度等不同条件下,研究了这些方法在具有正态分布指标的LPA中的表现。在Latent GOLD中实现的改性BCH具有优异的性能。最大似然和包容性方法对违反分布假设的情况并不稳健。这些发现与Bakk和vermont(2016)在具有分类指标的LCA背景下提出的结果大致一致并进行了扩展。
Comparing the Performance of Improved Classify-Analyze Approaches For Distal Outcomes in Latent Profile Analysis.
Several approaches are available for estimating the relationship of latent class membership to distal outcomes in latent profile analysis (LPA). A three-step approach is commonly used, but has problems with estimation bias and confidence interval coverage. Proposed improvements include the correction method of Bolck, Croon, and Hagenaars (BCH; 2004), Vermunt's (2010) maximum likelihood (ML) approach, and the inclusive three-step approach of Bray, Lanza, & Tan (2015). These methods have been studied in the related case of latent class analysis (LCA) with categorical indicators, but not as well studied for LPA with continuous indicators. We investigated the performance of these approaches in LPA with normally distributed indicators, under different conditions of distal outcome distribution, class measurement quality, relative latent class size, and strength of association between latent class and the distal outcome. The modified BCH implemented in Latent GOLD had excellent performance. The maximum likelihood and inclusive approaches were not robust to violations of distributional assumptions. These findings broadly agree with and extend the results presented by Bakk and Vermunt (2016) in the context of LCA with categorical indicators.