On interpretations of tests and effect sizes in regression models with a compositional predictor

Pub Date : 2020-01-01 DOI:10.2436/20.8080.02.100
G. Gallart, V. Pawlowsky-Glahn
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引用次数: 20

Abstract

Compositional data analysis is concerned with the relative importance of positive variables, expressed through their log-ratios. The literature has proposed a range of manners to compute log-ratios, some of whose interrelationships have never been reported when used as explanatory variables in regression models. This article shows their similarities and differences in interpretation based on the notion that one log-ratio has to be interpreted keeping all others constant. The article shows that centred, additive, pivot, balance and pairwise log-ratios lead to simple reparametrizations of the same model which can be combined to provide useful tests and comparable effect size estimates.
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用成分预测器解释回归模型中的检验和效应大小
成分数据分析关注的是通过对数比表示的正变量的相对重要性。文献提出了一系列计算对数比的方法,其中一些相互关系在回归模型中用作解释变量时从未报道过。本文基于必须在保持所有其他对数比不变的情况下解释一个对数比的概念,展示了它们在解释上的异同。本文表明,中心、加性、枢轴、平衡和成对对数比导致同一模型的简单重新参数化,可以结合起来提供有用的检验和可比较的效应大小估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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