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Mover‐stayer model with covariate effects on stayer's probability and mover's transitions

机译:对停留者概率和移动者转变具有协变量效应的移动者-留守者模型

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摘要

Abstract A discrete time Markov chain assumes that the population is homogeneous, each individual in the population evolves according to the same transition matrix. In contrast, a discrete mover‐stayer (MS) model postulates a simple form of population heterogeneity; in each initial state, there is a proportion of individuals who never leave this state (stayers) and the complementary proportion of individuals who evolve according to a Markov chain (movers). The MS model was extended by specifying the stayer's probability to be a logistic function of an individual's covariates but leaving the same transition matrix for all movers. We further extend the MS model by allowing each mover to have her/his covariates dependent transition matrix. The model for a mover's transition matrix is related to the extant Markov chains mixture model with mixing on the speed of movement of Markov chains. The proposed model is estimated using the expectation‐maximization algorithm and illustrated with a large data set on car loans and the simulation.
机译:摘要 离散时间马尔可夫链假设种群是同质的,种群中的每个个体都按照相同的转移矩阵演化。相比之下,离散移动者 (MS) 模型假设了一种简单形式的种群异质性;在每个初始状态中,都有一定比例的个体从未离开过这种状态(停留者),以及根据马尔可夫链进化的个体的互补比例(移动者)。MS 模型通过指定停留者的概率是个体协变量的逻辑函数来扩展,但为所有移动者保留相同的转移矩阵。我们进一步扩展了MS模型,允许每个推动者拥有她/他的协变量依赖转移矩阵。动子过渡矩阵模型与现存的马尔可夫链混合模型有关,混合对马尔可夫链的运动速度有影响。所提出的模型使用期望最大化算法进行估计,并用汽车贷款和模拟的大型数据集进行说明。

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