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On the Challenge of Fitting Tree Size Distributions in Ecology

机译:论适应树大小分布的生态挑战

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摘要

Patterns that resemble strongly skewed size distributions are frequently observed in ecology. A typical example represents tree size distributions of stem diameters. Empirical tests of ecological theories predicting their parameters have been conducted, but the results are difficult to interpret because the statistical methods that are applied to fit such decaying size distributions vary. In addition, binning of field data as well as measurement errors might potentially bias parameter estimates. Here, we compare three different methods for parameter estimation – the common maximum likelihood estimation (MLE) and two modified types of MLE correcting for binning of observations or random measurement errors. We test whether three typical frequency distributions, namely the power-law, negative exponential and Weibull distribution can be precisely identified, and how parameter estimates are biased when observations are additionally either binned or contain measurement error. We show that uncorrected MLE already loses the ability to discern functional form and parameters at relatively small levels of uncertainties. The modified MLE methods that consider such uncertainties (either binning or measurement error) are comparatively much more robust. We conclude that it is important to reduce binning of observations, if possible, and to quantify observation accuracy in empirical studies for fitting strongly skewed size distributions. In general, modified MLE methods that correct binning or measurement errors can be applied to ensure reliable results.
机译:在生态学中经常观察到类似于强烈偏斜的大小分布的图案。一个典型的例子代表了茎直径的树木大小分布。已经进行了生态理论预测其参数的实证测试,但结果难以解释,因为适用于此类衰减大小分布的统计方法各不相同。另外,现场数据的分箱以及测量误差可能会潜在地影响参数估计。在这里,我们比较了三种不同的参数估计方法-通用最大似然估计(MLE)和两种改进的MLE校正类型,用于观察值的合并或随机测量误差。我们测试是否可以精确识别三种典型的频率分布,即幂律,负指数和威布尔分布,以及当观测值被另外装仓或包含测量误差时,参数估计值如何产生偏差。我们表明,未校正的MLE在相对较小的不确定性水平上已经失去了识别功能形式和参数的能力。考虑到这种不确定性(合并或测量误差)的改进的MLE方法相对更健壮。我们得出结论,重要的是,如果可能的话,减少观察值的分箱,并在经验研究中量化观察值的准确性,以拟合强烈偏斜的大小分布。通常,可以应用修正分箱或测量错误的改进的MLE方法来确保可靠的结果。

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