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Latent Curve Models and Latent Change Score Models Estimated in R

机译:R中估计的潜在曲线模型和潜在变化得分模型

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In recent years the use of the latent curve model (LCM) among researchers in social sciences has increased noticeably, probably thanks to contemporary software developments and the availability of specialized literature. Extensions of the LCM, like the the latent change score model (LCSM), have also increased in popularity. At the same time, the R statistical language and environment, which is open source and runs on several operating systems, is becoming a leading software for applied statistics. We show how to estimate both the LCM and LCSM with the sem, lavaan, and DpenMx packages of the R software. We also illustrate how to read in, summarize, and plot data prior to analyses. Examples are provided on data previously illustrated by Ferrer, Hamagami, and McArdle (2004). The data and all scripts used here are available on the first author's Web site.
机译:近年来,社会科学研究人员对潜伏曲线模型(LCM)的使用显着增加,这可能要归功于当代软件的发展和专业文献的可用性。 LCM的扩展(如潜在变更评分模型(LCSM))也越来越受欢迎。同时,R统计语言和环境是开放源代码,可在多个操作系统上运行,正在成为应用统计的领先软件。我们展示了如何使用R软件的sem,lavaan和DpenMx软件包来估计LCM和LCSM。我们还将说明在分析之前如何读入,汇总和绘制数据。在先前由Ferrer,Hamagami和McArdle(2004)说明的数据上提供了示例。此处使用的数据和所有脚本可在第一作者的网站上找到。

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