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Estimating polymorphic growth curve sets with nonchronological data

机译:用非同步数据估算多态生长曲线组

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When we collect the growth curves of many individuals, orderly variation in the curves is often observed rather than a completely random mixture of various curves. Small individuals may exhibit similar growth curves, but the curves differ from those of large individuals, whereby the curves gradually vary from small to large individuals. It has been recognized that after standardization with the asymptotes, if all the growth curves are the same (anamorphic growth curve set), the growth curve sets can be estimated using nonchronological data; otherwise, that is, if the growth curves are not identical after standardization with the asymptotes (polymorphic growth curve set), this estimation is not feasible. However, because a given set of growth curves determines the variation in the observed data, it may be possible to estimate polymorphic growth curve sets using nonchronological data. In this study, we developed an estimation method by deriving the likelihood function for polymorphic growth curve sets. The method involves simple maximum likelihood estimation. The weighted nonlinear regression and least‐squares method after the log‐transform of the anamorphic growth curve sets were included as special cases. The growth curve sets of the height of cypress (Chamaecyparis obtusa) and larch (Larix kaempferi) trees were estimated. With the model selection process using the AIC and likelihood ratio test, the growth curve set for cypress was found to be polymorphic, whereas that for larch was found to be anamorphic. Improved fitting using the polymorphic model for cypress is due to resolving underdispersion (less dispersion in real data than model prediction). The likelihood function for model estimation depends not only on the distribution type of asymptotes, but the definition of the growth curve set as well. Consideration of these factors may be necessary, even if environmental explanatory variables and random effects are introduced.
机译:当我们收集许多人的生长曲线时,通常观察到曲线的有序变化而不是完全随机的各种曲线的混合物。小个体可能表现出类似的生长曲线,但曲线与大体的曲线不同,因此曲线逐渐从小到大体变化。已经认识到,在用渐近标准化之后,如果所有生长曲线相同(变形生长曲线集),可以使用非同步数据估计生长曲线;否则,即,如果在用渐变(多态性生长曲线集)标准化后生长曲线没有相同(多态性生长曲线集),则该估计是不可行的。然而,因为给定的一组生长曲线确定了观察到的数据中的变化,所以可以使用非同步数据来估计多态生长曲线集。在这项研究中,我们通过导出多态性生长曲线集的似然函数来开发了估计方法。该方法涉及简单的最大似然估计。在变形生长曲线集的对数转换之后,加权非线性回归和最小二乘法包括作为特殊情况。据估计柏树(Chamaecyparis obtusa)和落叶松(Larix Kaempferi)树的生长曲线组。通过使用AIC和似然比测试的模型选择过程,发现用于柏树的生长曲线是多态的,而对于落叶松,发现落叶松是多晶态。利用赛普拉斯多态性模型改进的拟合是由于解析了下分层(比模型预测的实际数据中较少的分散)。模型估计的似然函数不仅取决于分布类型的渐近类型,而且还取决于增长曲线的定义。即使介绍了环境解释性变量和随机效果,可能需要考虑这些因素。

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