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首页> 外文期刊>Stochastic environmental research and risk assessment >A time-dependent extension of the projected normal regression model for longitudinal circular data based on a hidden Markov heterogeneity structure
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A time-dependent extension of the projected normal regression model for longitudinal circular data based on a hidden Markov heterogeneity structure

机译:基于隐马尔可夫异质性结构的纵向圆形数据投影正态回归模型的时间依赖扩展

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摘要

The modelling of animal movement is an important ecological and environmental issue. It is well-known that animals change their movement patterns over time, according to observable and unobservable factors. To trace the dynamics of behaviors, to identify factors influencing these dynamics and unobserved characteristics driving intra-subjects correlations, we introduce a time-dependent mixed effects projected normal regression model. A set of animal-specific parameters following a hidden Markov chain is introduced to deal with unobserved heterogeneity. For the maximum likelihood estimation of the model parameters, we outline an expectation-maximization algorithm. A large-scale simulation study provides evidence on model behavior. The data analysis approach based on the proposed model is finally illustrated by an application to a dataset, which derives from a population of Talitrus saltator from the beach of Castiglione della Pescaia (Italy).
机译:动物运动的建模是一个重要的生态和环境问题。众所周知,动物会根据可观察和不可观察的因素随时间改变其运动方式。为了追踪行为的动力学,识别影响这些动力学的因素以及驱动受试者内部相关性的未观察特征,我们引入了时间依赖性混合效应投影正态回归模型。引入了隐马尔可夫链之后的一组动物特定参数,以处理未观察到的异质性。对于模型参数的最大似然估计,我们概述了期望最大化算法。大规模仿真研究提供了有关模型行为的证据。最后,通过对数据集的应用举例说明了基于所提出模型的数据分析方法,该数据集来自意大利Castiglione della Pescaia海滩的Talitrus盐沼种群。

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