2019
DOI: 10.1590/2318-0331.241920180084
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The use of principal component analysis for the construction of the Water Poverty Index

Abstract: In relation to water resources, indexes can be created to express the multiple dimensions involved with it to aid the planning and management of basins. In this regard, the Water Poverty Index is globally used, but one of its criticisms includes the subjectivity associated with how the sub-indexes are weighted. Therefore, in this study, we applied principal component analysis (PCA) to determine the sub-indexes’ weight: resource, access, capacity, use, and environment of the Seridó river basin. This new index w… Show more

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Cited by 19 publications
(12 citation statements)
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“…The PCA also shows a pattern of similarity between observations and variables, showing them as points on maps. The PCA is an unsupervised method, and these types of methods are important in practical application [38,39]. The PCA is a computationally simplified version of a class for general dimensional reduction analysis [40].…”
Section: Methodsmentioning
confidence: 99%
“…The PCA also shows a pattern of similarity between observations and variables, showing them as points on maps. The PCA is an unsupervised method, and these types of methods are important in practical application [38,39]. The PCA is a computationally simplified version of a class for general dimensional reduction analysis [40].…”
Section: Methodsmentioning
confidence: 99%
“…PCA is an approach that permits it possible to project the observations from p dimensional space of variables to a smaller dimensional space k, where ðk < pÞ such that a maximum of information is conserved. It converts many correlating factors to a few unrelated variables called PCs (Senna et al, 2019). The first component captures the enormous variance amount among the variables, while the second component captures the second largest variance and so on.…”
Section: Research Methodology 51 Principal Component Analysis (Pca)mentioning
confidence: 99%
“…Principal component analysis is a weighted linear combination of the original variables which is able to explain the data maximally. The PCA method is one method that can solve the problem of choosing an arbitrary weighting scheme where the weighting problem is due to the mathematical determination of the correlation matrix (or covariance) of the original variable as the weight of the principal component which becomes a linear combination of the original variable with characteristic vector (de Senna et al, 2019;Shaukat et al, 2020;Shammi et al, 2021). Furthermore, the first principal component captures the largest proportion of the variation in the original set of variables, while the second principal component captures the largest proportion of variation that is not accounted for by the first principal component and so on.…”
Section: Hc Household Conditionsmentioning
confidence: 99%