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Automated Latent Growth Curve Model Fitting: A Segmentation and Knot Selection Approach

机译:自动潜在增长曲线模型拟合:分割和结选择方法

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摘要

Latent growth curve models are widely used in the social and behavioral sciences to study complex developmental patterns of change over time. The trajectories of these developmental patterns frequently exhibit distinct segments in the studied variables. Latent growth models with piecewise functions for repeated measurements of variables have become increasingly popular for modeling such developmental trajectories. A major problem with using piecewise models is determining the precise location of the point where the change in the process has occurred and uncovering the related number of segments. The purpose of this paper is to introduce an optimization procedure that can be used to determine both the segments and location of the knots in piecewise linear latent growth models. The procedure is illustrated using empirical data in order to detect the number of segments and change points. The results demonstrate the capabilities of the procedure for fitting latent growth curve models.
机译:潜在增长曲线模型在社会科学和行为科学中被广泛使用,以研究随着时间变化的复杂的发展模式。这些发展模式的轨迹经常在研究变量中表现出截然不同的部分。具有用于重复测量变量的分段函数的潜在增长模型已经越来越普遍地用于对这种发展轨迹进行建模。使用分段模型的主要问题是确定过程中发生更改的点的精确位置,并找出相关的段数。本文的目的是介绍一种优化过程,该过程可用于确定分段线性潜在增长模型中的节段和节的位置。使用经验数据说明了该过程,以便检测段数和更改点。结果证明了该程序拟合潜在生长曲线模型的能力。

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