Division of Biostatistics, School of Public Health, University of Minnesota, A460 Mayo Building, MMC 303 420 Delaware Street, S.E., Minneapolis, MN , 55455, USA.
Department of Educational Psychology, College of Education and Human Development, University of Minnesota, Minneapolis, MN, USA.
Psychometrika. 2018 Sep;83(3):733-750. doi: 10.1007/s11336-017-9594-5. Epub 2017 Nov 17.
Piecewise growth mixture models are a flexible and useful class of methods for analyzing segmented trends in individual growth trajectory over time, where the individuals come from a mixture of two or more latent classes. These models allow each segment of the overall developmental process within each class to have a different functional form; examples include two linear phases of growth, or a quadratic phase followed by a linear phase. The changepoint (knot) is the time of transition from one developmental phase (segment) to another. Inferring the location of the changepoint(s) is often of practical interest, along with inference for other model parameters. A random changepoint allows for individual differences in the transition time within each class. The primary objectives of our study are as follows: (1) to develop a PGMM using a Bayesian inference approach that allows the estimation of multiple random changepoints within each class; (2) to develop a procedure to empirically detect the number of random changepoints within each class; and (3) to empirically investigate the bias and precision of the estimation of the model parameters, including the random changepoints, via a simulation study. We have developed the user-friendly package BayesianPGMM for R to facilitate the adoption of this methodology in practice, which is available at https://github.com/lockEF/BayesianPGMM . We describe an application to mouse-tracking data for a visual recognition task.
分段增长混合模型是分析个体随时间增长轨迹分段趋势的一种灵活且有用的方法类别,其中个体来自两个或更多潜在类别。这些模型允许每个类别的整个发展过程的每个部分具有不同的函数形式;例如,有两个线性增长阶段,或者是二次阶段后跟随线性阶段。变化点(结点)是从一个发展阶段(部分)到另一个阶段的过渡时间。推断变化点的位置(多个)通常具有实际意义,同时还可以推断其他模型参数。随机变化点允许每个类内的过渡时间存在个体差异。我们研究的主要目标如下:(1)使用贝叶斯推断方法开发 PGMM,允许在每个类中估计多个随机变化点;(2)开发一种程序,通过经验检测每个类中的随机变化点的数量;(3)通过模拟研究,经验性地研究模型参数(包括随机变化点)的估计偏差和精度。我们已经为 R 开发了用户友好的包 BayesianPGMM,以促进该方法在实践中的采用,该包可在 https://github.com/lockEF/BayesianPGMM 上获得。我们描述了一个应用于视觉识别任务的鼠标跟踪数据的应用。