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Analysis of the Better Life Index Trough a Cluster Algorithm

Raquel Lourenço Carvalhal Monteiro (), Valdecy Pereira () and Helder Costa ()
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Raquel Lourenço Carvalhal Monteiro: Universidade Federal Fluminense
Valdecy Pereira: Universidade Federal Fluminense

Social Indicators Research: An International and Interdisciplinary Journal for Quality-of-Life Measurement, 2019, vol. 142, issue 2, No 2, 477-506

Abstract: Abstract This paper discusses some concepts attributed to the term well-being and different ways to measure it. Then we present an alternative approach based on clustering algorithm to measure Quality of Life considering each dimension of the OECD well-being indicator, the Better Life Index, to minimize the loss of information encountered on aggregated indicators and to obtain a consistent and solid profile, a segmentation per dimension of the countries contemplated by this indicator. To build a consistent and solid profile, first we have standardized each variable, so the influence of a variable that is measured on a much larger scale than the other ones could be removed, then a k-means algorithm was applied for each dimension and the number of clusters was validated by the Silhouette Coefficient and by a visual inspection of the first two or three principal components (PCA) for dimensions with more than two variables. The resulting clusters could be finally analysed. The profiles are considered methodologically robust, because in all dimension we have found no negative values for the Silhouette Coefficient, meaning that the countries that belong to a certain cluster have a high similarity while different clusters held a high dissimilarity and additionally the PCA visual inspection have reinforced our analysis retaining, at least, 89% of common variance for dimension with more than two variables. Although the Better Life Index it’s the most complete well-being indicator, considering 11 of the 14 well-being dimensions, only 38 countries are encompassed by the indicator, therefore inferences about countries outside this set may be not significant. Hence a detailed analysis of each dimension is necessary. The combination of the Silhouette Coefficient and the PCA visual inspection proved to be very efficient to analyse this type of data and to validate the number of cluster. Clustering each dimension and then building a profile of countries, proved to be a strong methodology that separates homogeneous elements in heterogeneous groups.

Keywords: Well-being; Quality of Life indicators; Clustering algorithm (search for similar items in EconPapers)
Date: 2019
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Citations: View citations in EconPapers (4)

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DOI: 10.1007/s11205-018-1902-7

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