An Extended Multiplicative Error Model of Allometry: Incorporating Systematic Components, Non-Normal Distributions and Piecewise Heteroscedasticity

IF 2.5 Q3 BIOCHEMICAL RESEARCH METHODS
H. Echavarría-Heras, E. Villa-Diharce, Abelardo Montesinos-López, C. Leal-Ramírez
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Abstract

Allometry refers to the relationship between the size of a trait and that of the whole body of an organism. Pioneering observations by Otto Snell and further elucidation by D’Arcy Thompson set the stage for its integration into Huxley’s explanation of constant relative growth that epitomizes through the formula of simple allometry. The traditional method to identify such a model conforms to a regression protocol fitted in the direct scales of data. It involves a Huxley’s formula-systematic part and a lognormally distributed multiplicative error term. In many instances of allometric examination, the predictive strength of this paradigm is unsuitable. Established approaches to improve fit enhance the complexity of the systematic relationship while keeping the go-along normality-borne error. These extensions followed Huxley’s idea that considering a biphasic allometric pattern could be necessary. However, for present data composing 10410 pairs of measurements of individual eelgrass leaf dry weight and area, a fit relying on a biphasic systematic term and multiplicative lognormal errors barely improved correspondence measure values while maintaining a heavy tails problem. Moreover, the biphasic form and multiplicative-lognormal-mixture errors did not provide complete fit dependability either. However, updating the outline of such an error term to allow heteroscedasticity to occur in a piecewise-like mode finally produced overall fit consistency. Our results demonstrate that when attempting to achieve fit quality improvement in a Huxley's model-based multiplicative error scheme, allowing for a complex allometry form for the systematic part, a non-normal distribution-driven error term and a composite of uneven patterns to describe the heteroscedastic outline could be essential.
一种扩展的异速误差乘法模型:纳入系统成分、非正态分布和分片异方差性
异化作用是指生物体某一特征的大小与整个机体的大小之间的关系。奥托-斯内尔(Otto Snell)的开创性观察和达西-汤普森(D'Arcy Thompson)的进一步阐明,为将其纳入赫胥黎关于恒定相对生长的解释奠定了基础。确定这种模型的传统方法符合直接按数据比例拟合的回归协议。它涉及赫胥黎公式的系统部分和对数正态分布的乘法误差项。在许多异速检验中,这种模式的预测强度并不合适。已有的改进拟合的方法在保持随正态分布误差的同时,增强了系统关系的复杂性。这些扩展遵循了赫胥黎的想法,即考虑双相异速模式可能是必要的。然而,对于目前由 10410 对单个鳗草叶片干重和面积测量值组成的数据,依靠双相系统项和对数正态乘法误差的拟合几乎无法改善对应测量值,同时还存在重尾问题。此外,双相形式和乘对数正态混合误差也不能提供完全可靠的拟合。然而,更新这种误差项的轮廓,使异方差以类似片断的模式出现,最终产生了整体拟合一致性。我们的研究结果表明,当试图在基于赫胥黎模型的乘法误差方案中实现拟合质量改进时,允许系统性部分采用复杂的几何形式、非正态分布驱动的误差项以及描述异速轮廓的不均匀模式复合可能是至关重要的。
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来源期刊
Biology Methods and Protocols
Biology Methods and Protocols Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
3.80
自引率
2.80%
发文量
28
审稿时长
19 weeks
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