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A parsimonious approach for modeling uncertainty within complex nonlinear relationships

机译:一种用于简化复杂非线性关系中的不确定性建模的简约方法

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Advancements in information technology led environmental scientists to the illusion that efforts should be mainly focused on developing models that reduce uncertainty rather than on models adjusted to the existing uncertainty. As a result, environmental relationships are represented by non‐parsimonious and suboptimal models, which in many instances could be even wrong. The objective of this research was to provide scientists focused on modeling ecosystem processes with a procedure that supplies parsimonious correct results. The procedure transforms the response variable to achieve a linear model and the normality of the residuals. After the parameters of the transformed model are estimated, the bias induced by back‐transforming is corrected. We have computed the bias corrections for 11 of the most popular functions from the power, trigonometric, and hyperbolic families by considering the truncated normal distribution, when necessary. Using generated data, we have shown that the proposed procedure supplies unbiased results. We have identified a sample size artifact of data generation such that when the variance increases the truncation of distribution starts altering the corrections of predicted values, sometimes by more than 50% from the actual values. Our results indicate that uncertainty, measured by variance, impacts the analysis in a non‐intuitive way when the defining domain of the response variable is restricted. The subtle way of influencing the development of complex nonlinear models by uncertainty advocates the usage of parsimonious linear models, which are less sensitive to the method of processing data. Finally, ecosystem processes should be modeled with strategies that consider not only processes and computation aspects, but also uncertainty, in particularly reducing variance to levels with no significant impact on the results.
机译:信息技术的进步使环境科学家产生了这样的幻觉,即工作应主要集中在开发减少不确定性的模型上,而不是针对适应现有不确定性的模型上。结果,环境关系由非简约和次优模型表示,在许多情况下甚至可能是错误的。这项研究的目的是为专注于生态系统过程建模的科学家提供一种提供简约正确结果的程序。该过程转换响应变量以实现线性模型和残差的正态性。在估计了转换模型的参数之后,可以校正由逆转换引起的偏差。我们在必要时考虑了截断的正态分布,从幂,三角函数和双曲线族中计算了11个最流行函数的偏差校正。使用生成的数据,我们已经表明,所提出的过程提供了公正的结果。我们已经确定了数据生成的样本大小伪像,使得当方差增加时,分布的截断会开始更改预测值的校正,有时会比实际值多50%。我们的结果表明,当响应变量的定义域受到限制时,以方差衡量的不确定性以非直观的方式影响分析。通过不确定性影响复杂非线性模型的发展的微妙方法主张使用简约线性模型,该模型对处理数据的方法不太敏感。最后,应该采用不仅考虑过程和计算方面,而且考虑不确定性的策略对生态系统过程进行建模,特别是将方差降低到不影响结果的水平。

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