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Graphical sustainability analysis using disjoint biplots

Author

Listed:
  • José Fernando Romero Cañizares

    (University of Salamanca)

  • Purificación Vicente Galindo

    (University of Salamanca)

  • Yannis Phillis

    (Technical University of Crete)

  • Evangelos Grigoroudis

    (Technical University of Crete)

Abstract

The assessment of sustainability is of the utmost importance nowadays. Several approaches exist that measure sustainability at a national level and rank countries accordingly. Comparison of countries could be done numerically or pictorially. This paper introduces a novel clustering disjoint HJ-biplot approach, which is then applied to data from two well-known models: Sustainability Assessment by Fuzzy Evaluation (SAFE) and the United Nations Sustainable Development Goals Index (UN-SDGs). This approach performs a graphical ranking that makes the sustainability standing of countries very transparent. As expected, the pictorial model yielded similar rankings to those of SAFE and UN-SDGs, but it additionally grouped countries according to their most important indicators, thereby yielding a more global picture of sustainability. Our approach thus comprises a useful complement to existing mathematical sustainability ranking models.

Suggested Citation

  • José Fernando Romero Cañizares & Purificación Vicente Galindo & Yannis Phillis & Evangelos Grigoroudis, 2022. "Graphical sustainability analysis using disjoint biplots," Operational Research, Springer, vol. 22(2), pages 1575-1596, April.
  • Handle: RePEc:spr:operea:v:22:y:2022:i:2:d:10.1007_s12351-020-00573-7
    DOI: 10.1007/s12351-020-00573-7
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    References listed on IDEAS

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