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Parameter estimation via stochastic variants of the ECM algorithm with applications to plant growth modeling

机译:通过ECM算法的随机变体进行参数估计及其在植物生长模型中的应用

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Mathematical modeling of plant growth has gained increasing interest in recent years due to its potential applications. A general family of models, known as functional–structural plant models (FSPMs) and formalized as dynamic systems, serves as the basis for the current study. Modeling, parameterization and estimation are very challenging problems due to the complicated mechanisms involved in plant evolution. A specific type of a non-homogeneous hidden Markov model has been proposed as an extension of the GreenLab FSPM to study a certain class of plants with known organogenesis. In such a model, the maximum likelihood estimator cannot be derived explicitly. Thus, a stochastic version of an expectation conditional maximization (ECM) algorithm was adopted, where the E-step was approximated by sequential importance sampling with resampling (SISR). The complexity of the E-step creates the need for the design and the comparison of different simulation methods for its approximation. In this direction, three variants of SISR and a Markov Chain Monte Carlo (MCMC) approach are compared for their efficiency in parameter estimation on simulated and real sugar beet data, where observations are taken by censoring plant's evolution (destructive measurements). The MCMC approach seems to be more efficient for this particular application context and also for a large variety of crop plants. Moreover, a data-driven automated MCMC–ECM algorithm for finding an appropriate sample size in each ECM step and also an appropriate number of ECM steps is proposed. Based on the available real dataset, some competing models are compared via model selection techniques.
机译:由于其潜在的应用,近年来植物生长的数学模型引起了越来越多的兴趣。通用模型家族,称为功能结构工厂模型(FSPM),形式化为动态系统,是当前研究的基础。由于植物进化涉及复杂的机制,因此建模,参数化和估计是非常具有挑战性的问题。已提出一种特定类型的非均质隐马尔可夫模型作为GreenLab FSPM的扩展,以研究具有已知器官发生作用的某些植物。在这种模型中,最大似然估计器无法明确推导。因此,采用了预期条件最大化(ECM)算法的随机版本,其中E步通过具有重采样的顺序重要性抽样(SISR)进行了近似。 E步的复杂性导致需要进行设计,并需要比较不同仿真方法的近似值。在这个方向上,比较了SISR和Markov链蒙特卡洛(MCMC)方法的三种变体,它们在模拟和真实甜菜数据的参数估计中具有较高的效率,其中通过检查植物的进化(破坏性测量)进行观察。对于特定的应用环境以及多种农作物,MCMC方法似乎更为有效。此外,提出了一种数据驱动的自动MCMC-ECM算法,用于在每个ECM步骤中找到合适的样本大小,以及合适数量的ECM步骤。根据可用的真实数据集,通过模型选择技术比较一些竞争模型。

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