A multivariate graphical representation of row and column markers, chosen in such a way that they can be overlapped in the same reference system with maximum quality of representation.
Published in Chapter:
Multivariate Sustainability Profile of Global Fortune 500 Companies Using GRI-G4 Database
Mónica Jiménez-Hernández (Universidad de Colima, Mexico), Purificación Vicente-Galindo (University of Salamanca, Spain), Nathalia Tejedor-Flores (Universidad Tecnológica de Panamá, Panama), Adelaide Freitas (University of Aveiro, Portugal), and Purificación Galindo (University of Salamanca, Spain)
Copyright: © 2021
|Pages: 30
DOI: 10.4018/978-1-7998-6985-6.ch003
Abstract
The main objective of this research is to find the sustainability gradients of Global Fortune 500 companies and sort them as a function of economic, environmental, and social components using multivariate statistical methods to establish the foundations for better knowledge of the trends and sustainability reporting habits. A combined approach, comprising principal coordinates analysis (PCoA) and logistic regression model (LRM), is proposed to build an external logistics biplot (ELB). Moreover, HJ-Biplot and parallel coordinates are applied. This chapter helps to understand why many companies view their corporate social responsibility (CSR) reports as a way to guarantee the credibility of the published information. In particular, based on the Global Reporting Initiative, the sustainability gradients of the Global Fortune 500 companies are obtained and statistically exploited to analyze how the companies can make improvements in terms of sustainability.