On Interpretations of tests and effect sizes in regression models with a compositional predictor
Germà Coenders, Vera Pawlowsky‐Glahn
2020UPCommons institutional repository (Universitat Politècnica de Catalunya)29 citationsDOIOpen Access PDF
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.
Topics & Concepts
Pairwise comparisonStatisticsInterpretation (philosophy)MathematicsRegression analysisRange (aeronautics)Compositional dataConstant (computer programming)RegressionLinear regressionEconometricsLog-linear modelSimple (philosophy)Linear modelComputer sciencePhilosophyEpistemologyComposite materialMaterials scienceProgramming languageGeochemistry and Geologic MappingMineral Processing and GrindingHydrocarbon exploration and reservoir analysis