2017
DOI: 10.2139/ssrn.3005184
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Gini Estimation Under Infinite Variance

Abstract: We study the problems related to the estimation of the Gini index in presence of a fattailed data generating process, i.e. one in the stable distribution class with finite mean but infinite variance (i.e. with tail index α ∈ (1, 2)). We show that, in such a case, the Gini coefficient cannot be reliably estimated using conventional nonparametric methods, because of a downward bias that emerges under fat tails. This has important implications for the ongoing discussion about economic inequality.We start by discu… Show more

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Cited by 3 publications
(2 citation statements)
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“…To assess inequality, we use the Gini index of both the exporter and importer normalized strength distributions [28]. e estimation of the Gini index may be problematic with infinite variance distributions, as these we are dealing with, because of underestimation [29]. Our study focuses on the comparative evolution of inequality before and after the application of a mitigation policy on a synthetic model, so we think that Gini is a good enough proxy for this purpose.…”
Section: Complexitymentioning
confidence: 99%
“…To assess inequality, we use the Gini index of both the exporter and importer normalized strength distributions [28]. e estimation of the Gini index may be problematic with infinite variance distributions, as these we are dealing with, because of underestimation [29]. Our study focuses on the comparative evolution of inequality before and after the application of a mitigation policy on a synthetic model, so we think that Gini is a good enough proxy for this purpose.…”
Section: Complexitymentioning
confidence: 99%
“…Despite their informative relevance, the Gini coefficient and its spatial variant exploit the mean , which, under fat-tailed distributions, as many socio-economic variables tend to be, may be undefined. In such cases, as shown in [ 52 ], the Gini coefficient cannot be reliably estimated with non-parametric methods and will result in a downward bias emerging under fat tails.…”
Section: Previous Workmentioning
confidence: 99%