The objective of this research was to present a methodology for identification and modeling of residual autocorrelation considering individual '/> Identification and modeling of residual autocorrelation in the adjustments of Wood?s model to lactation curves of goats
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Identification and modeling of residual autocorrelation in the adjustments of Wood?s model to lactation curves of goats

机译:伍德模型对山羊泌乳曲线的调整中的残差自相关的识别和建模

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> face="Verdana, Arial, Helvetica, sans-serif" size="2">The objective of this research was to present a methodology for identification and modeling of residual autocorrelation considering individual adjustments of the Wood's model to lactation dairy goats and evaluate the influence of such modeling in the quality of adjustment. The Wood's model was adjusted individually for lactations in three different ways, the first have assumed independence of errors (IE) for all lactations, the second have assumed autoregressives first order errors (AR1) for all lactations and the third, named (IE-AR1), was used the AR1 errors structure only for lactations that showed residual autocorrelation according to Durbin-Watson test, and the IE errors structure for the other lactations. The three ways of adjustment were compared by the percentage of convergence and the average of the mean square errors (MSE) and coefficients of determination adjusted (R2adj). The average of MSE and R2aj were very similar in the three cases of residual structure. However, the model with IE-AR1 residual structure showed a higher rate of convergence, which is an advantage, as it allows a greater number of animals are evaluated for their lactation curve. Therefore, due to the increasing convergence obtained, the fit of the Wood's model with IE-AR1 residual structure is the option most suitable for large data sets.
机译:> face =“ Verdana,Arial,Helvetica,sans-serif” size =“ 2”>此研究的目的是提出一种考虑到伍德模型对泌乳的个体调整而对残留自相关进行识别和建模的方法奶山羊,并评估这种建模对调整质量的影响。 Wood的模型通过三种不同的方式分别针对泌乳进行了调整,第一种假设所有泌乳均具有误差的独立性(IE),第二种假设所有泌乳均具有自回归的一阶误差(AR1),第三种命名为(IE-AR1 )仅用于哺乳期的AR1错误结构(根据Durbin-Watson检验显示出残留的自相关性),而其他哺乳期则使用IE错误结构。通过收敛百分比和均方误差(MSE)的平均值以及调整后的确定系数(R 2 adj)比较了三种调整方法。在三种残留结构中,MSE和R 2 aj的平均值非常相似。但是,具有IE-AR1残留结构的模型显示出较高的收敛速度,这是一个优点,因为它允许对更多的动物进行泌乳曲线评估。因此,由于收敛性的提高,具有IE-AR1残差结构的Wood模型的拟合是最适合大数据集的选项。

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