Accounting statement analysis at industry level. A gentle introduction to the compositional approach
Germ\`a Coenders (1), N\'uria Arimany Serrat (2) ((1) University of Girona, (2) University of Vic - Central University of Catalonia)

TL;DR
This paper introduces compositional data analysis techniques for financial statement analysis, addressing common statistical issues and demonstrating applications to industry-level ratios, classification, and regression models.
Contribution
It presents a comprehensive introduction to applying compositional data analysis to financial ratios, including transformations, visualization, classification, and regression, with practical examples.
Findings
Effective handling of skewness and outliers in financial ratios
Visualization of firms using compositional PCA biplots
Classification of firms into performance profiles
Abstract
Compositional data are contemporarily defined as positive vectors, the ratios among whose elements are of interest to the researcher. Financial statement analysis by means of accounting ratios a.k.a. financial ratios fulfils this definition to the letter. Compositional data analysis solves the major problems in statistical analysis of standard financial ratios at industry level, such as skewness, non-normality, non-linearity, outliers, and dependence of the results on the choice of which accounting figure goes to the numerator and to the denominator of the ratio. Despite this, compositional applications to financial statement analysis are still rare. In this article, we present some transformations within compositional data analysis that are particularly useful for financial statement analysis. We show how to compute industry or sub-industry means of standard financial ratios from a…
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Taxonomy
TopicsGeochemistry and Geologic Mapping · Sensory Analysis and Statistical Methods
