Accounting and Statistical Analyses for Sustainable Development
Multiple Perspectives and Information-Theoretic Complexity Reduction
Abstract
In this Open Access publication Claudia Lemke develops a comprehensive Multi-Level Sustainable Development Index (MLSDI) that is applicable to micro, meso, and macro objects by conducting methodological and empirical research. Multi-level comparability is crucial because the Sustainable Development Goals (SDGs) at macro level can only be achieved if micro and meso objects contribute. The author shows that a novel information-theoretic algorithm outperforms established multivariate statistical weighting methods such as the principal component analysis (PCA). Overcoming further methodological shortcomings of previous sustainable development indices, the MLSDI avoids misled managerial and political decision making.
Keywords
Environmental Economics; Sustainability; Sustainable Development Goals (SDGs); Composite indicators; Multilevel perspective; Principal component analysis; Information theory; Open AccessDOI
10.1007/978-3-658-33246-4ISBN
9783658332464, 9783658332464Publisher
Springer NaturePublisher website
https://www.springernature.com/gp/products/booksPublication date and place
2021Imprint
Springer Fachmedien WiesbadenSeries
Sustainable Management, Wertschöpfung und Effizienz,Classification
Environmental economics