School of Plant Biology, The University of Western Australia, Crawley, Western Australia, Australia.
PLoS One. 2012;7(9):e45140. doi: 10.1371/journal.pone.0045140. Epub 2012 Sep 25.
Litter decomposition rate (k) is typically estimated from proportional litter mass loss data using models that assume constant, normally distributed errors. However, such data often show non-normal errors with reduced variance near bounds (0 or 1), potentially leading to biased k estimates. We compared the performance of nonlinear regression using the beta distribution, which is well-suited to bounded data and this type of heteroscedasticity, to standard nonlinear regression (normal errors) on simulated and real litter decomposition data. Although the beta model often provided better fits to the simulated data (based on the corrected Akaike Information Criterion, AIC(c)), standard nonlinear regression was robust to violation of homoscedasticity and gave equally or more accurate k estimates as nonlinear beta regression. Our simulation results also suggest that k estimates will be most accurate when study length captures mid to late stage decomposition (50-80% mass loss) and the number of measurements through time is ≥ 5. Regression method and data transformation choices had the smallest impact on k estimates during mid and late stage decomposition. Estimates of k were more variable among methods and generally less accurate during early and end stage decomposition. With real data, neither model was predominately best; in most cases the models were indistinguishable based on AIC(c), and gave similar k estimates. However, when decomposition rates were high, normal and beta model k estimates often diverged substantially. Therefore, we recommend a pragmatic approach where both models are compared and the best is selected for a given data set. Alternatively, both models may be used via model averaging to develop weighted parameter estimates. We provide code to perform nonlinear beta regression with freely available software.
枯枝落叶分解率 (k) 通常是根据比例枯枝落叶质量损失数据,利用假定误差呈正态分布且恒定的模型来估算的。然而,这种数据往往显示出非正态误差,在边界(0 或 1)附近方差减小,可能导致 k 的估计值存在偏差。我们比较了使用适合有界数据和这种异方差的贝塔分布进行非线性回归的表现,与标准非线性回归(正态误差)在模拟和真实枯枝落叶分解数据上的表现。虽然贝塔模型通常能更好地拟合模拟数据(基于校正的赤池信息量准则,AIC(c)),但标准非线性回归对同方差的违反具有鲁棒性,并且与非线性贝塔回归一样或更准确地给出 k 的估计值。我们的模拟结果还表明,当研究长度涵盖中晚期分解(50-80%质量损失)且随时间的测量次数≥5 时,k 的估计值将最准确。在中晚期分解过程中,回归方法和数据转换选择对 k 的估计值影响最小。k 的估计值在不同方法之间的变化最大,在早期和晚期分解时通常准确性较低。在实际数据中,没有一种模型是主要的;在大多数情况下,根据 AIC(c),这两种模型无法区分,并且给出了相似的 k 估计值。然而,当分解速率较高时,正态和贝塔模型的 k 估计值往往会有很大差异。因此,我们建议采用一种实用的方法,比较两种模型,并根据给定的数据选择最佳模型。或者,可以通过模型平均来使用这两种模型,以开发加权参数估计值。我们提供了使用免费软件执行非线性贝塔回归的代码。