2019
DOI: 10.1016/j.rser.2019.03.028
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A compositional approach for modelling SDG7 indicators: Case study applied to electricity access

Abstract: Monitoring energy indicators has acquired a renewed interest with the 2030 Agenda for Sustainable Development, and specifically with goal 7 (SDG7), which seeks to guarantee universal access to energy. The predominant criteria to monitor SDG7 are given in a set of individual indicators. Along this line, the UN indicators proposed in the 47th session of the UN Statistical commission are a practical starting point. A relevant characteristic of these indicators is that they can be expressed as proportions from a w… Show more

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Cited by 26 publications
(9 citation statements)
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“…Even though the application of standard methods to compositional data yielded interpretable and apparently reasonable results, the application of standard methods in compositional data are, at best, inappropriate [26]. As explained by Aitchison [25], Pawlowsky-Glahn and Egozcue [26], Filzmoser, Hron, and Reimann [60], Marcillo-Delgado, Ortego and Pérez-Foguet [80], Cruz-Sandoval, Ortego and Roca [29], the use of standard statistical methods in compositional data originate problems, such as prediction of values outside the sample space, spurious correlations and sub-compositional incoherence, among others.…”
Section: Lessons and Methodological Implicationsmentioning
confidence: 99%
“…Even though the application of standard methods to compositional data yielded interpretable and apparently reasonable results, the application of standard methods in compositional data are, at best, inappropriate [26]. As explained by Aitchison [25], Pawlowsky-Glahn and Egozcue [26], Filzmoser, Hron, and Reimann [60], Marcillo-Delgado, Ortego and Pérez-Foguet [80], Cruz-Sandoval, Ortego and Roca [29], the use of standard statistical methods in compositional data originate problems, such as prediction of values outside the sample space, spurious correlations and sub-compositional incoherence, among others.…”
Section: Lessons and Methodological Implicationsmentioning
confidence: 99%
“…However, in the present study, the national energy transition, which we approach via a qualitative analysis, is cross-sectional, and a national pathway is necessary to promote sustainable energy comprehensively and efficiently. (6) Marcillo-Delgado et al [23] adopted a quantitative analysis of electricity access, which is one of the SDG7 indicators and is an aspect of stable supply. Based on stable supply achieved through a path with a diverse supply with renewable energy, Korkovelos et al [24] provided electrification modelling to support SDG7.…”
Section: Taiwan's Efforts To Implement Sdgs and The Highlights Of Thimentioning
confidence: 99%
“…Analysis of compositional data in a raw form using standard statistical tools may lead to spurious correlations and consequently, to wrong conclusions [57][58][59]. Further consequences can be found in Pearson [76], Chayes [77], Aitchison [78,79], Rock [80] and Rollinson [81].…”
Section: A Compositional Data Analysis Approachmentioning
confidence: 99%
“…Thus, using standard statistical methods to analyze compositional data may lead to biased results. To avoid this, data should be transformed into Aitchison's geometry [57][58][59].…”
Section: Introductionmentioning
confidence: 99%