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Proposing an information criterion for individual-based models developed in a pattern-oriented modelling framework

机译:为面向模式的建模框架中开发的基于个人的模型提出信息准则

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摘要

Individual-based models (IBMs) have been improved in quality and reliability in recent years with an approach called pattern-oriented modelling (POM). POM proposes guidelines to develop models reproducing multiple patterns observed on the field and to test systematically how well the IBMs reproduce them. POM studies used generally traditional methods of goodness of fit such as the sum of squares evaluation or ad hoc comparisons of fitting errors and variations. Model selection, however, can be a rigorous statistical approach based on information theory and information criteria such as the Akaike's information criterion (AIC) or the deviance information criterion (DIC). So far, it has not been tried to link POM to these rigorous techniques. The main problems to achieve that are: (a) the difficulty to have likelihood functions for IBMs' parameters and (b) the possibility to obtain posterior distributions of IBMs' parameters given the patterns to reproduce. in a first part, this paper answers problem (a) by proposing and explaining how to calculate a deviance measure (POMDEV) for models developed in a context of POM. And while answering the second problem, a second part of the paper proposes an information criterion for model selection in a POM context (the pattern-oriented modelling information criterion: POMIC). This criterion does not yet have the same theoretical foundation as, e.g., AIC, but uses formal analogies to the DIC. In a third part POMIC is tested with a modelling exercise. This exercise shows the potential of POMIC to use multiple patterns for selecting among multiple potential submodels and eventually select the most parsimonious and well fitting model version. We conclude that POMIC, although being a heuristically derived approach, can greatly improve the POM framework.
机译:近年来,基于个人的模型(IBM)通过称为面向模式的建模(POM)的方法得到了改进。 POM提出了一些准则,以开发可重现现场观察到的多种模式的模型,并系统地测试IBM的重现程度。 POM研究通常使用传统的拟合优度方法,例如平方和评估或拟合误差和变异的临时比较。然而,模型选择可以是基于信息理论和信息标准(例如赤池信息标准(AIC)或偏差信息标准(DIC))的严格统计方法。到目前为止,还没有尝试将POM与这些严格的技术联系起来。要实现的主要问题是:(a)难以为IBM参数设置似然函数,以及(b)在给定再现模式的情况下获得IBM参数的后验分布的可能性。在第一部分中,本文通过提出和解释如何为在POM环境下开发的模型计算偏差度量(POMDEV)来回答问题(a)。在回答第二个问题的同时,本文的第二部分提出了在POM上下文中用于模型选择的信息准则(面向模式的建模信息准则:POMIC)。该标准尚未具有与例如AIC相同的理论基础,但是使用了与DIC的正式类比。在第三部分中,通过建模练习对POMIC进行了测试。此练习显示了POMIC使用多种模式在多个潜在子模型中进行选择并最终选择最简约和最合适的模型版本的潜力。我们得出的结论是,尽管POMIC是一种启发式方法,但可以极大地改善POM框架。

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