Robust Inference on Income Inequality: $t$-Statistic Based Approaches
Rustam Ibragimov, Paul Kattuman, Anton Skrobotov

TL;DR
This paper introduces robust t-statistic based methods for inference on income inequality, effectively handling heterogeneity, heavy tails, and dependence in data, with empirical application to Russian regional income inequality.
Contribution
It develops a robust large-sample test for equality of inequality measures using group-based t-statistics, applicable under broad data conditions.
Findings
Valid inference under heterogeneity and heavy tails
Effective comparison of inequality measures across regions
Empirical demonstration with Russian income data
Abstract
Empirical analyses on income and wealth inequality and those in other fields in economics and finance often face the difficulty that the data is heterogeneous, heavy-tailed or correlated in some unknown fashion. The paper focuses on applications of the recently developed \textit{t}-statistic based robust inference approaches in the analysis of inequality measures and their comparisons under the above problems. Following the approaches, in particular, a robust large sample test on equality of two parameters of interest (e.g., a test of equality of inequality measures in two regions or countries considered) is conducted as follows: The data in the two samples dealt with is partitioned into fixed numbers (e.g., ) of groups, the parameters (inequality measures dealt with) are estimated for each group, and inference is based on a standard two-sample test…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Income, Poverty, and Inequality
