基尼系数与偏度的关系研究

IF 2.3 2区 生物学 Q2 ECOLOGY
Meng Lian, Long Chen, Cang Hui, Fuyuan Zhu, Peijian Shi
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引用次数: 0

摘要

偏度是衡量分布不对称性的一种方法,经常被用来反映一种重要的生物学特性。另一项统计数据,基尼系数(GC),最初用于衡量经济不平等,已经在衡量生物规模分布的不平等方面得到了验证。考虑到GC和偏度控制重叠域并相互作用,研究人员对它们的关系(随着生物[器官,组织或细胞]大小分布而变化)感到困惑,并将两者结合起来提供更完整的数据图像。本研究提供了生物尺寸分布的GC分析形式,包括双参数威布尔分布、均匀分布、正态分布、双参数对数正态分布、伽玛分布、三参数威布尔分布、三参数对数正态分布和三参数伽玛分布。利用两个经验数据集和模拟数据集来阐明不同分布下的gc -偏度关系。对于上述分布,GC -偏度关系可分为三种类型:(i)对于对称分布,偏度为0,无论其与偏度的关系如何,GC的范围为0.56 ~ 0.58乘以标准差除以均值;(ii)对于零阈值的非对称分布,GC是偏度的单调递增函数,两者是等价的;(iii)对于非零阈值的非对称分布,GC由偏度和附加校正因子决定。我们展示了不同计算方法(包括多边形(梯形集)面积法和旋转Lorenz曲线法)在提高基于小样本调整的GC计算精度方面的差异。本研究将GC转化为分布的一种性质,对GC -偏度关系有了清晰的认识。这项工作为选择和使用GC来测量生态数据中的不平等提供了见解,促进了更准确和有意义的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

On the Relationship Between the Gini Coefficient and Skewness

On the Relationship Between the Gini Coefficient and Skewness

Skewness, a measure of the asymmetry of a distribution, is frequently employed to reflect a biologically important property. Another statistic, the Gini coefficient (GC), originally used to measure economic inequality, has been validated in measuring the inequality of biological size distributions. Given that the GC and skewness control overlapping domains and interact with each other, researchers are perplexed by their relationship (varying with the biological [organ, tissue or cell] size distributions) and use both of them together to provide a more complete picture of the data. This study provides analytical forms of the GC for biological size distributions, including two-parameter Weibull, uniform, normal, two-parameter lognormal, gamma, three-parameter Weibull, three-parameter lognormal, and three-parameter gamma distributions. Two empirical data sets and simulation data sets were used to clarify the GC–skewness relationships under different distributions. For the aforementioned distributions, the GC–skewness relationships can be divided into three types: (i) for a symmetrical distribution, the skewness is 0, and the GC ranges from 0.56 to 0.58 multiplied by the standard deviation divided by the mean irrespective of its relationship with the skewness; (ii) for an asymmetric distribution with a zero threshold, the GC is a monotonously increasing function of the skewness, and the two measures are equivalent; (iii) for an asymmetric distribution with a non-zero threshold, the GC is determined by the skewness and an additional correction factor. We showed the differences in improving the accuracy of GC calculations based on small-sample adjustments among various calculation methods, including the polygon (trapezoidal set) area method and the rotated Lorenz curve method. The present study turns the GC into a property of the distribution and offers a clear understanding for the GC–skewness relationship. This work provides insights into selecting and using the GC to measure inequality in ecological data, facilitating more accurate and meaningful analyses.

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来源期刊
CiteScore
4.40
自引率
3.80%
发文量
1027
审稿时长
3-6 weeks
期刊介绍: Ecology and Evolution is the peer reviewed journal for rapid dissemination of research in all areas of ecology, evolution and conservation science. The journal gives priority to quality research reports, theoretical or empirical, that develop our understanding of organisms and their diversity, interactions between them, and the natural environment. Ecology and Evolution gives prompt and equal consideration to papers reporting theoretical, experimental, applied and descriptive work in terrestrial and aquatic environments. The journal will consider submissions across taxa in areas including but not limited to micro and macro ecological and evolutionary processes, characteristics of and interactions between individuals, populations, communities and the environment, physiological responses to environmental change, population genetics and phylogenetics, relatedness and kin selection, life histories, systematics and taxonomy, conservation genetics, extinction, speciation, adaption, behaviour, biodiversity, species abundance, macroecology, population and ecosystem dynamics, and conservation policy.
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