Multivariate Behav Res. 2006 Dec 1;41(4):473-97. doi: 10.1207/s15327906mbr4104_3.
Cross-classified random effects modeling (CCREM) is used to model multilevel data from nonhierarchical contexts. These models are widely discussed but infrequently used in social science research. Because little research exists assessing when it is necessary to use CCREM, 2 studies were conducted. A real data set with a cross-classified structure was analyzed by comparing parameter estimates when ignoring versus modeling the cross-classified data structure. A follow-up simulation study investigated potential factors affecting the need to use CCREM. Results indicated that when the structure is ignored, fixed-effect estimates were unaffected, but standard error estimates associated with the variables modeled incorrectly were biased. Estimates of the variance components also displayed bias, which was related to several study factors.
交叉分类随机效应模型(CCREM)用于对非层次结构背景下的多层次数据进行建模。这些模型在社会科学研究中被广泛讨论,但很少被使用。由于几乎没有研究评估何时需要使用 CCREM,因此进行了两项研究。通过比较忽略和建模交叉分类数据结构时的参数估计,对具有交叉分类结构的真实数据集进行了分析。后续的模拟研究调查了影响使用 CCREM 必要性的潜在因素。结果表明,当忽略结构时,固定效应估计不受影响,但与错误建模的变量相关的标准误差估计存在偏差。方差分量的估计也存在偏差,这与几个研究因素有关。