Statistical inference for concentration measures has been of considerable interest in recent years. Income studies often deal with very large samples, hence precision would not seem a serious issue. Yet, in many empirical studies large standard errors are observed (Maasoumi, 1997). Therefore, it is important to provide methodologies to assess whether differences in estimates are statistically significant. This paper presents an analysis of the performance of asymptotic confidence intervals for Gini's index, virtually the most widely used concentration index. To determine minimum sample sizes assuring a given accuracy in confidence intervals, an extensive simulation study has been carried out. A wide set of underlying distributions has been considered, choosing from specific models for income data. As expected, the minimum sample sizes are seriously affected by some population characteristics as tail heaviness and asymmetry. However, it turns out that in a wide range of cases they are smaller than sample sizes actually used in social sciences
Greselin, F., Pasquazzi, L. (2008). Minimum sample sizes in asymptotic confidence intervals for Gini's inequality measure. STATISTICA & APPLICAZIONI, 6(2), 99-115.
Minimum sample sizes in asymptotic confidence intervals for Gini's inequality measure
GRESELIN, FRANCESCA;PASQUAZZI, LEO
2008
Abstract
Statistical inference for concentration measures has been of considerable interest in recent years. Income studies often deal with very large samples, hence precision would not seem a serious issue. Yet, in many empirical studies large standard errors are observed (Maasoumi, 1997). Therefore, it is important to provide methodologies to assess whether differences in estimates are statistically significant. This paper presents an analysis of the performance of asymptotic confidence intervals for Gini's index, virtually the most widely used concentration index. To determine minimum sample sizes assuring a given accuracy in confidence intervals, an extensive simulation study has been carried out. A wide set of underlying distributions has been considered, choosing from specific models for income data. As expected, the minimum sample sizes are seriously affected by some population characteristics as tail heaviness and asymmetry. However, it turns out that in a wide range of cases they are smaller than sample sizes actually used in social sciencesI documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.