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New Approaches to Studying Problem Behaviors: A Comparison of Methods for Modeling Longitudinal, Categorical Adolescent Drinking Data

机译:研究问题行为的新方法:纵向,分类青少年饮酒数据建模方法的比较

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摘要

Analyzing problem-behavior trajectories can be difficult. The data are generally categorical and often quite skewed, violating distributional assumptions of standard normal-theory statistical models. In this article, the authors present several currently available modeling options, all of which make appropriate distributional assumptions for the observed categorical data. Three are based on the generalized linear model: a hierarchical generalized linear model, a growth mixture model, and a latent class growth analysis. They also describe a longitudinal latent class analysis, which requires fewer assumptions than the first З. Finally, they illustrate all of the models using actual longitudinal adolescent alcohol-use data. They guide the reader through the model-selection process, comparing the results in terms of convergence properties, fit and residuals, parsimony, and interpretability. Advances in computing and statistical software have made the tools for these types of analyses readily accessible to most researchers. Using appropriate models for categorical data will lead to more accurate and reliable results, and their application in real data settings could contribute to substantive advancements in the field of development and the science of prevention.
机译:分析问题行为轨迹可能很困难。数据通常是分类的,而且经常偏斜,这违反了标准正态理论统计模型的分布假设。在本文中,作者提出了几种当前可用的建模选项,所有这些选项都为观察到的分类数据做出了适当的分布假设。三个基于广义线性模型:分层广义线性模型,增长混合模型和潜在类增长分析。他们还描述了纵向潜伏类分析,该分析需要比第一个З更少的假设。最后,他们使用实际的纵向青少年酒精使用数据说明了所有模型。他们指导读者完成模型选择过程,比较结果的收敛性,拟合度和残差,简约性和可解释性。计算和统计软件的进步使大多数研究人员可以轻松使用用于这类分析的工具。对分类数据使用适当的模型将导致更准确和可靠的结果,并将其应用于实际数据设置中可有助于在发展和预防科学领域取得实质性进展。

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