In this paper we present some nonparametric bootstrap methods to construct distribution-free confidence intervals for inequality indices belonging to the Gini family. These methods have a coverage accuracy better than that obtained with the asymptotic distribution of their natural estimators, typically the standard normal. The coverage performances of these methods are evaluated for the index R by Gini with a Monte Carlo experiment on samples simulated from the Dagum income model (Type I), which is usually used to describe the income distribution.
Palmitesta, P., Provasi, C., Spera, C. (2000). Confidence Interval Estimation for Inequality Indices of the Gini Family. COMPUTATIONAL ECONOMICS, 16(1-2), 137-147.
Confidence Interval Estimation for Inequality Indices of the Gini Family
PALMITESTA, PAOLA;SPERA, COSIMO
2000-01-01
Abstract
In this paper we present some nonparametric bootstrap methods to construct distribution-free confidence intervals for inequality indices belonging to the Gini family. These methods have a coverage accuracy better than that obtained with the asymptotic distribution of their natural estimators, typically the standard normal. The coverage performances of these methods are evaluated for the index R by Gini with a Monte Carlo experiment on samples simulated from the Dagum income model (Type I), which is usually used to describe the income distribution.File | Dimensione | Formato | |
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https://hdl.handle.net/11365/30261
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