Quantile based study of income distributions and income inequality measures
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Farook College, University of Calicut
Abstract
Income distributions and income inequality measures are key topics in econom-
ics and statistics, focusing on the allocation of wealth and resources across different
segments of a population. Understanding these concepts is crucial for evaluating
economic policies, social equity, and economic development. There are two primary
approaches to modeling data: the distribution function approach and the quantile
function approach. This thesis emphasizes a quantile-based analysis of income dis-
tributions and income inequality measures. We explore various quantile functions
from the literature and assess their potential for modeling income data. We conduct
a comprehensive quantile-based income analysis of the Power-Pareto (PP) distribu-
tion by deriving key income inequality measures and examining the Lorenz ordering
associated with it. Additionally, simulation, estimation, and application aspects are
investigated. This study introduces the Singh-Maddala-Dagum (SMD) distribution,
defined as the sum of the quantile functions of the Singh-Maddala (SM) and Dagum
distributions. Its distributional properties, along with measures of income inequality
and poverty, are derived. The poverty gap ratio and Foster-Greer-Thorbecke (FGT)
measures are formulated in quantile terms. Estimation of parameters and prac-
tical applications are conducted. Furthermore, this thesis includes a quantile-based
comparative analysis of income inequality across Indian states. Six parametric mod-
els with closed-form quantile functions, including Weibull, PP, SM, Dagum, SMD,
and Modified Lambda Family (MLF), are employed to model per capita household
income across Indian states using data from the India Human Development Survey-
II (IHDS-II). Parameter estimation and validation are performed for each model.
For every state, empirical income inequality measures, including the Gini, Pietra,
Atkinson, generalized entropy, Bonferroni, and Frigyes measures, are derived and
compared with theoretical values from the best-fitting model. This thesis concludes
by highlighting the significance of quantile functions in income modeling and out-
lining potential directions for future research
