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Flexible and Fixed Mathematical Models Describing Growth Patterns of Chukar Partridges

机译:描述Chukar鹧and的生长模式的灵活和固定数学模型

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In animal science, the nonlinear regression models for growth curve analysis ofgrowth patterns are separated into two groups called fixed and flexible according to their point of inflection. The aims of this study were to compare fixed and flexible growth functions and to determine the best fit model for the growth data of chukar partridges. With this aim, the growth data of partridges were modeled with widely used models, such as Gompertz, Logistic, Von Bertalanffy as well as the flexible functions, such as, Richards, Janoschek, Levakovich. So as to evaluate growth functions, the R~2 (coefficient of determination), adjusted R~2 (adjusted coefficient of determination), MSE (mean square error), AIC (Akaike's information criterion) and BIC (Bayesian information criterion) goodness of fit criteria were used. It has been determined that the best fit model from the point of chukar partridge growth data according to mentioned goodness of fit criteria is Janoschek function which has a flexible structure. The Janoschek model is not only important because it has a higher number of parameters with biological meaning than the other functions (the mature weight and initial weight parameters), but also because it was not previously used in the modeling of the chukar partridge growth.
机译:在动物科学中,根据其拐点分离为生长曲线分析的非线性回归模型分为称为固定和灵活的两组。本研究的目的是比较固定和灵活的增长功能,并确定花型鹧and的生长数据的最佳拟合模型。通过这种目标,鹧的增长数据是用广泛使用的模型进行建模,例如Gompertz,Logistic,Von Bertalanffy以及灵活的功能,例如Richards,Janoschek,Levakovich。从而评估生长功能,R〜2(确定系数),调整R〜2(调整的确定系数),MSE(均值方误差),AIC(Akaike的信息标准)和BIC(贝叶斯信息标准)的良好使用拟合标准。已经确定,根据所提到的拟合标准的良好性能,从Chukar鹧Grows数据点的最佳拟合模型是Janoschek功能,具有灵活的结构。 Janoschek模型不仅重要,因为它具有比其他功能(成熟的重量和初始重量参数)的生物学意义具有更高数量的参数,而且因为它以前未用于Chukar鹧and的建模。

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