Department of Educational Psychology, Texas A&M University, 4225 TAMU, College Station, TX, 77843-4225, USA.
Behav Res Methods. 2022 Aug;54(4):1559-1579. doi: 10.3758/s13428-021-01691-6. Epub 2021 Sep 10.
Multilevel models (MLMs) can be used to examine treatment heterogeneity in single-case experimental designs (SCEDs). With small sample sizes, common issues for estimating between-case variance components in MLMs include nonpositive definite matrix, biased estimates, misspecification of covariance structures, and invalid Wald tests for variance components with bounded distributions. To address these issues, unconstrained optimization, model selection procedure based on parametric bootstrap, and restricted likelihood ratio test (RLRT)-based procedure are introduced. Using simulation studies, we compared the performance of two types of optimization methods (constrained vs. unconstrained) when the covariance structures are correctly specified or misspecified. We also examined the performance of a model selection procedure to obtain the optimal covariance structure. The results showed that the unconstrained optimization can avoid nonpositive definite issues to a great extent without a compromise in model convergence. The misspecification of covariance structures would cause biased estimates, especially with small between case variance components. However, the model selection procedure was found to attenuate the magnitude of bias. A practical guideline was generated for empirical researchers in SCEDs, providing conditions under which trustworthy point and interval estimates can be obtained for between-case variance components in MLMs, as well as the conditions under which the RLRT-based procedure can produce acceptable empirical type I error rate and power.
多水平模型(MLMs)可用于检查单病例实验设计(SCEDs)中的治疗异质性。在小样本量的情况下,MLMs 中估计病例间方差分量时常见的问题包括非正定矩阵、有偏估计、协方差结构的指定不当以及有界分布的方差分量的无效 Wald 检验。为了解决这些问题,引入了无约束优化、基于参数 bootstrap 的模型选择程序和基于受限似然比检验(RLRT)的程序。通过模拟研究,我们比较了当协方差结构正确指定或指定不当时,两种优化方法(约束与非约束)的性能。我们还研究了模型选择程序的性能,以获得最佳的协方差结构。结果表明,无约束优化在很大程度上可以避免非正定问题,而不会影响模型收敛。协方差结构的指定不当会导致有偏估计,尤其是在病例间方差分量较小时。然而,模型选择程序被发现可以减轻偏差的程度。为 SCED 中的实证研究人员生成了实用指南,提供了在何种条件下可以在 MLMs 中获得可靠的点估计和区间估计病例间方差分量的条件,以及在何种条件下 RLRT 程序可以产生可接受的经验型 I 类错误率和功效。