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      A primer on two-level dynamic structural equation models for intensive longitudinal data in Mplus.

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      Psychological Methods
      American Psychological Association (APA)

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          Abstract

          <p class="first" id="d1572567e69">Technological advances have led to an increase in intensive longitudinal data and the statistical literature on modeling such data is rapidly expanding, as are software capabilities. Common methods in this area are related to time-series analysis, a framework that historically has received little exposure in psychology. There is a scarcity of psychology-based resources introducing the basic ideas of time-series analysis, especially for data sets featuring multiple people. We begin with basics of N = 1 time-series analysis and build up to complex dynamic structural equation models available in the newest release of Mplus Version 8. The goal is to provide readers with a basic conceptual understanding of common models, template code, and result interpretation. We provide short descriptions of some advanced issues, but our main priority is to supply readers with a solid knowledge base so that the more advanced literature on the topic is more readily digestible to a larger group of researchers. (PsycInfo Database Record (c) 2020 APA, all rights reserved). </p>

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          Author and article information

          Journal
          Psychological Methods
          Psychological Methods
          American Psychological Association (APA)
          1939-1463
          1082-989X
          December 19 2019
          December 19 2019
          Article
          10.1037/met0000250
          31855015
          7efce9f3-e07e-489d-9690-e493f178621a
          © 2019
          History

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