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Classical and robust orthogonal regression between parts of compositional data
Authors:K Hr?zová  V Todorov  K Hron  P Filzmoser
Institution:1. Department of Mathematical Analysis and Applications of Mathematics, Palacky University, Olomouc, Czech Republic;2. United Nations Industrial Development Organization (UNIDO), Vienna International Centre, Vienna, Austria;3. Institute of Statistics and Mathematical Methods in Economics, Vienna University of Technology, Vienna, Austria
Abstract:The different parts (variables) of a compositional data set cannot be considered independent from each other, since only the ratios between the parts constitute the relevant information to be analysed. Practically, this information can be included in a system of orthonormal coordinates. For the task of regression of one part on other parts, a specific choice of orthonormal coordinates is proposed which allows for an interpretation of the regression parameters in terms of the original parts. In this context, orthogonal regression is appropriate since all compositional parts – also the explanatory variables – are measured with errors. Besides classical (least-squares based) parameter estimation, also robust estimation based on robust principal component analysis is employed. Statistical inference for the regression parameters is obtained by bootstrap; in the robust version the fast and robust bootstrap procedure is used. The methodology is illustrated with a data set from macroeconomics.
Keywords:Compositional data  orthogonal regression  isometric log-ratio coordinates  MM-estimates  bootstrap inference
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