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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Markov and semi-Markov switching linear mixed models used to identify forest tree growth components.
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Markov and semi-Markov switching linear mixed models used to identify forest tree growth components.

机译:用于识别林木生长成分的马尔可夫和半马尔可夫切换线性混合模型。

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摘要

Tree growth is assumed to be mainly the result of three components: (i) an endogenous component assumed to be structured as a succession of roughly stationary phases separated by marked change points that are asynchronous among individuals, (ii) a time-varying environmental component assumed to take the form of synchronous fluctuations among individuals, and (iii) an individual component corresponding mainly to the local environment of each tree. To identify and characterize these three components, we propose to use semi-Markov switching linear mixed models, i.e., models that combine linear mixed models in a semi-Markovian manner. The underlying semi-Markov chain represents the succession of growth phases and their lengths (endogenous component) whereas the linear mixed models attached to each state of the underlying semi-Markov chain represent-in the corresponding growth phase-both the influence of time-varying climatic covariates (environmental component) as fixed effects, and interindividual heterogeneity (individual component) as random effects. In this article, we address the estimation of Markov and semi-Markov switching linear mixed models in a general framework. We propose a Monte Carlo expectation-maximization like algorithm whose iterations decompose into three steps: (i) sampling of state sequences given random effects, (ii) prediction of random effects given state sequences, and (iii) maximization. The proposed statistical modeling approach is illustrated by the analysis of successive annual shoots along Corsican pine trunks influenced by climatic covariates.
机译:假定树木生长主要是以下三个因素的结果:(i)一种内生性成分,其结构被构造为一系列连续的大致固定相,由各个个体之间不同步的标记变化点隔开;(ii)时变环境成分假设采取个体之间同步波动的形式,并且(iii)主要对应于每棵树的本地环境的个体成分。为了识别和表征这三个组件,我们建议使用半马尔可夫切换线性混合模型,即以半马尔可夫方式组合线性混合模型的模型。基本的半马尔可夫链表示增长阶段的序列及其长度(内生分量),而附加在基本的半马尔可夫链的每个状态上的线性混合模型在相应的增长阶段都表示随时间变化的影响气候协变量(环境成分)为固定效应,个体间异质性(个体成分)为随机效应。在本文中,我们讨论了在一般框架中对马尔可夫和半马尔可夫切换线性混合模型的估计。我们提出了一种类似蒙特卡洛期望最大化的算法,其迭代分解为三个步骤:(i)给定随机效应的状态序列采样,(ii)给定状态序列的随机效应预测,以及(iii)最大化。通过分析受气候协变量影响的科西嘉松树干的连续年生芽,可以说明所提出的统计建模方法。

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