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Fuzzy Clusterwise Growth Curve Models via Generalized Estimating Equations: An Application to the Antisocial Behavior of Children

机译:广义估计方程的模糊聚类增长曲线模型:在儿童反社会行为中的应用

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摘要

The growth curve model has been a useful tool for the analysis of repeated measures data. However, it is designed for an aggregate-sample analysis based on the assumption that the entire sample of respondents are from a single homogenous population. Thus, this method may not be suitable when heterogeneous subgroups exist in the population with qualitatively distinct patterns of trajectories. In this paper, the growth curve model is generalized to a fuzzy clustering framework, which explicitly accounts for such group-level heterogeneity in trajectories of change over time. Moreover, the proposed method estimates parameters based on generalized estimating equations thereby relaxing the assumption of correct specification of the population covariance structure among repeated responses. The performance of the proposed method in recovering parameters and the number of clusters is investigated based on two Monte Carlo analyses involving synthetic data. In addition, the empirical usefulness of the proposed method is illustrated rjy an application concerning the antisocial behavior of a sample of children.
机译:增长曲线模型已经成为分析重复测量数据的有用工具。但是,它是基于以下假设而设计的,用于汇总样本分析:整个受访者样本均来自同一个总体。因此,当人口中存在定性不同轨迹模式的异类子群时,此方法可能不合适。在本文中,将增长曲线模型推广到一个模糊聚类框架,该框架明确地说明了随时间变化的轨迹中的此类组级别异质性。此外,所提出的方法基于广义估计方程来估计参数,从而放宽了在重复响应中总体协方差结构的正确规范的假设。基于两个涉及合成数据的蒙特卡洛分析,研究了该方法在恢复参数和聚类数方面的性能。此外,在涉及儿童样本的反社会行为的应用中说明了所提出方法的经验实用性。

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