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      Latent Class Analysis With Distal Outcomes: A Flexible Model-Based Approach

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      Structural Equation Modeling: A Multidisciplinary Journal
      Informa UK Limited

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          Abstract

          Although prediction of class membership from observed variables in latent class analysis is well understood, predicting an observed distal outcome from latent class membership is more complicated. A flexible model-based approach is proposed to empirically derive and summarize the class-dependent density functions of distal outcomes with categorical, continuous, or count distributions. A Monte Carlo simulation study is conducted to compare the performance of the new technique to two commonly used classify-analyze techniques: maximum-probability assignment and multiple pseudo-class draws. Simulation results show that the model-based approach produces substantially less biased estimates of the effect compared to either classify-analyze technique, particularly when the association between the latent class variable and the distal outcome is strong. In addition, we show that only the model-based approach is consistent. The approach is demonstrated empirically: latent classes of adolescent depression are used to predict smoking, grades, and delinquency. SAS syntax for implementing this approach using PROC LCA and a corresponding macro are provided.

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          Author and article information

          Journal
          Structural Equation Modeling: A Multidisciplinary Journal
          Structural Equation Modeling: A Multidisciplinary Journal
          Informa UK Limited
          1070-5511
          1532-8007
          January 2013
          January 2013
          : 20
          : 1
          : 1-26
          Article
          10.1080/10705511.2013.742377
          4240499
          25419096
          e3d120fb-5869-46be-ad31-3a5211d42413
          © 2013
          History

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