分类变量间关联系数的模拟比较

Sinem Sensoy, Yeliz Arici
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引用次数: 0

摘要

目的:本研究的目的是比较在不同实验条件下用于确定分类变量之间关系的一些关联系数的稳健性。材料和方法:进行模拟研究,从二元标准正态分布中产生随机数,相关性为0.5和0.9。样本量分别为30、50、100、150和200。随机数字间隔等,分别编码为3×3、4×4和5×5交叉表。比较Pearson’s、Spearman’s rank、Kendall’s tau-b、Kendall’s tau-c、Goodman-Kruskal’s gamma和Somer’s d系数在特定总体关联度、表维度和样本量组合的不同实验条件下的稳健性。结果:在所有实验条件下,Goodman-Kruskal的伽马系数给出了最接近研究开始时设定的关系水平的结果。但在达到一定水平后,表维和样本量的增加对其产生负向影响。Kendall的tau-b和tau-c系数与实际关联程度相差最大。Spearman的等级相关性比Kendall的tau-b、Kendall的tau-c和Somer的d系数更强。结论:研究结果表明,列联表的维度和样本量是影响分类变量关联系数稳健性的有效因素。因此,研究人员在选择要计算的关联系数时,应考虑表的尺寸和样本量以及变量的类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison via Simulation of Association Coefficients Calculated between Categorical Variables
Aim: The aim of this study was to compare the robustness of some association coefficients used to determine the relationships between categorical variables under different experimental conditions. Material and Methods: A simulation study was conducted where random numbers were generated from a bivariate standard normal distribution with correlations of 0.5 and 0.9. Sample sizes were set at 30, 50, 100, 150 and 200. Random numbers were equally spaced and coded as 3×3, 4×4 and 5×5 cross-tabulations, respectively. The robustness of Pearson’s, Spearman's rank, Kendall's tau-b, Kendall's tau-c, Goodman-Kruskal’s gamma and Somer's d coefficients were compared under different experimental conditions consisting of combinations of specified population correlation degrees, table dimensions and sample sizes. Results: The Goodman-Kruskal’s gamma coefficient gave the closest result to the relationship levels set at the beginning of the study in all experimental conditions. However, after a certain level, it was negatively affected by the increase in table dimension and sample size. Kendall's tau-b and tau-c coefficients were furthest from the actual degree of the association. Spearman's rank correlation was more robust than Kendall's tau-b, Kendall's tau-c and Somer's d coefficients. Conclusion: The results of the study showed that the dimension of the contingency tables and sample size were effective factors in the robustness of association coefficients for categorical variables. Therefore, researchers should consider the table dimension and sample size as well as the type of variable when selecting the association coefficient to be calculated.
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