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Micro-macro multilevel latent class models with multiple discrete individual-level variables

机译:具有多个离散的单个级别变量的微宏多级别潜在类模型

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摘要

An existing micro-macro method for a single individual-level variable is extended to the multivariate situation by presenting two multilevel latent class models in which multiple discrete individual-level variables are used to explain a group-level outcome. As in the univariate case, the individual-level data are summarized at the group-level by constructing a discrete latent variable at the group level and this group-level latent variable is used as a predictor for the group-level outcome. In the first extension, that is referred to as the Direct model, the multiple individual-level variables are directly used as indicators for the group-level latent variable. In the second extension, referred to as the Indirect model, the multiple individual-level variables are used to construct an individual-level latent variable that is used as an indicator for the group-level latent variable. This implies that the individual-level variables are used indirectly at the group-level. The within- and between components of the (co)varn the individual-level variables are independent in the Direct model, but dependent in the Indirect model. Both models are discussed and illustrated with an empirical data example.
机译:通过提供两个多级隐性类模型,其中使用多个离散的个人级变量来解释组级结果,将现有的用于单个个人级变量的微宏方法扩展到多变量情况。与单变量情况一样,通过在组级别构造离散的潜在变量,在组级别汇总个人级别的数据,并将该组级别的潜在变量用作组级别结果的预测变量。在第一个扩展(称为直接模型)中,多个单个级别变量直接用作组级别潜在变量的指示符。在第二个扩展中,称为间接模型,多个单个级别变量用于构造单个级别潜在变量,该变量用作组级别潜在变量的指标。这意味着个人级别的变量在组级别间接使用。 (共)变量的内部和内部分量在直接模型中是独立的,但在间接模型中是相关的。两种模型都通过经验数据示例进行了讨论和说明。

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