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Kinetic theory and Brazilian income distribution

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  • Igor D. S. Siciliani
  • Marcelo H. R. Tragtenberg

Abstract

We investigate the Brazilian personal income distribution using data from National Household Sample Survey (PNAD), an annual research available by the Brazilian Institute of Geography and Statistics (IBGE). It provides general characteristics of the country's population. Using PNAD data background we also confirm the effectiveness of a semi-empirical model that reconciles Pareto power-law for high-income people and Boltzmann- Gibbs distribution for the rest of population. We use three measures of income inequality: the Pareto index, the average income and the crossover income. In order to cope with many dimensions of the income inequality, we calculate these three indices and also the Gini coefficient for the general population as well as for two kinds of population dichotomies: black / indigenous / mixed race versus white / yellow; and men versus women. We also followed the time series of these indices for the period 2001-2014. The results suggest a decreasing of Brazilian income inequality over the selected period. Another important result is that historically-disadvantaged subgroups (Women and black / indigenous / mixed race),that are the majority of the population, have a more equalitarian income distribution. These groups have also a smaller monthly income than the others and this social structure remained virtually unchanged in the period of time.

Suggested Citation

  • Igor D. S. Siciliani & Marcelo H. R. Tragtenberg, 2017. "Kinetic theory and Brazilian income distribution," Papers 1709.06480, arXiv.org.
  • Handle: RePEc:arx:papers:1709.06480
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    References listed on IDEAS

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