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首页> 外文期刊>Annals of Forest Research >Correction for bias of models with lognormal distributed variables in absence of original data
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Correction for bias of models with lognormal distributed variables in absence of original data

机译:在没有原始数据的情况下对具有对数正态分布变量的模型的偏差进行校正

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摘要

The logarithmic transformation of the dependent variables for models developed using regression analysis induces bias that should be corrected, regardless its magnitude. The simplest correction for bias was proposed by Sprugel (1983), which basically multiplies the back-transformed estimates with the constant value of exponential of half the variance of the errors of the logarithmically transformed variable. While this correction is fast and easy to implement does not supplies estimates of the variability existing in the original data. Consequently, a procedure based on generated data was developed to provide unbiased estimates for both attribute of interest and variability existing along the model. The procedure reveals that valid estimates can be obtained if large number of values is generated (e.g., 5000 values/x). The procedures supplies accurate estimates for the attribute of interest and its variability, but encounters significant data processing difficulties for models with more than one predictor variable. Nevertheless, irrespective the number of predictor of variables and magnitude of the correction factor computed by Sprugel, the estimates determined using logarithmic transformations should be corrected for bias, to avoid cumulated errors or chaotic effects associated with nonlinear models.
机译:对于使用回归分析开发的模型,因变量的对数变换会引起偏差,无论其大小如何,都应进行校正。 Sprugel(1983)提出了最简单的偏差校正方法,该方法基本上将逆变换后的估计值乘以对数变换变量误差方差的一半的指数常数。尽管此校正快速且易于实施,但无法提供原始数据中存在的可变性的估计值。因此,开发了一种基于生成数据的程序,以提供感兴趣的属性和模型中存在的可变性的无偏估计。该过程表明,如果生成大量值(例如5000个值/ x),则可以获得有效的估计。该过程可为感兴趣的属性及其可变性提供准确的估计,但是对于具有多个预测变量的模型,数据处理会遇到很大的困难。但是,无论变量的预测变量的数量和Sprugel计算的校正因子的大小如何,都应校正使用对数变换确定的估计值的偏差,以避免累积误差或与非线性模型相关的混沌效应。

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