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This study investigates the relevant factors that drive income and wealth inequality in the
United States with the aim of facilitating a better understanding of the dynamic relationships
between inequality and key macroeconomic variables. This can serve as a prerequisite to the
ability of policymakers to restrain the negative externalities associated with increasing
inequality and implement measures to reduce the unexpected effects.
The thesis consists of five independent papers corresponding to five chapters. As
economic growth is a primary goal of every country and widely accepted tool for reducing
economic inequality, our study starts with economic growth. The first paper examines the
relationship between the U.S. per capita real GDP and income inequality over the period
1917 to 2012. The literature uncovers a complex set of interactions, which depends on the
specific research method and sample, between inequality and economic growth and
highlights the difficulty of capturing a definitive causal relationship. Inequality either
promotes, retards, or does not affect growth. Most existing studies that examine the
inequality-growth nexus exclusively utilize time-domain methods. We use wavelet analysis
which allows the simultaneous examination of correlation and causality between the two
series in both the time and frequency domains. We find robust evidence of positive
correlation between the growth and inequality across frequencies. Yet, directions of causality
vary across frequencies and evolve with time. In the time-domain, the time-varying nature of
long-run causalities implies structural changes in the two series. These findings provide a
more thorough picture of the relationship between the U.S. per capita real GDP and inequality measures over time and frequency, suggesting important implications for policy
makers.
Inflation targeting is a monetary policy where the central bank sets a specific inflation
rate as its goal. The federal government spurs economic growth by adding liquidity, credit,
and jobs to the economy and inflation stimulate the demand needed to drive economic growth.
The second paper investigates the effects of the inflation rate on income inequality to see
whether monetary policy and the resulting inflation rate can affect income inequality and
improve the well-being of individuals. Our analysis relies on a cross-state panel for the
United States over the 1976 to 2007 period to assess the relationship between income
inequality and the inflation rate, employing a semiparametric instrument variable (IV)
estimator. By using cross-state panel data, we minimize the problems associated with data
comparability often encountered in cross-country studies related to income inequality. We
find that the relationship depends on the level of the inflation rate. A positive relationship
occurs only if the states exceed a threshold level of the inflation rate. Below this value,
inflation rate lowers income inequality. The results suggest that a nonlinear relationship
exists between income inequality and the inflation rate.
The researchers also examine the relationship between income inequality and growth in
personal income, since personal income exerts a large effect on consumer consumption, and
since consumer spending drives much of the economy. The third paper investigates the causal
relationship between personal income and income inequality in a panel data of 48 states for
the period of 1929-2012. Although inequality rose almost everywhere between 1980 to
present, some states and regions experienced substantially greater increases in inequality than
did others. The decentralization allows different state level of policies, however, there is also
a cross-state consistency in how those policies respond to the main economic shocks. Since
U.S. states are subject to significant spatial effects given their high level of integration, ignoring cross-sectional dependency may lead to substantial bias and size distortions. We
employ a causality methodology proposed by Emirmahmutoglu and Kose (2011), as it takes
into account possible slope heterogeneity and cross-sectional dependency in a multivariate
panel. Evidence of bi-directional causal relationship exists for several inequality measures --
the Atkinson Index, Gini Coefficient, the Relative Mean Deviation, Theil�s entropy Index and
Top 10% -- but no evidence of the causal relationship for the Top 1 % measure. Also, this
paper finds state-specific causal relationships between personal income and inequality.
The level of development of the United States is related to the sophistication of the
financial structure which influences the ability to hedge against shocks and to loosen
spending constraints. It leads us to investigate if the financial development affects income
inequality in the U.S. In the fourth paper, we look into the role of financial development on
U.S. state-level income inequality in a panel data of 50 states from 1976 to 2011. To our
knowledge, this paper is the first regarding examining the role of financial development on
U.S. state-level inequality. We analyze the data using Fixed Effect and Dynamic Fixed Effect
regression. We also divide 50 states into two groups-states, with higher inequality measure
and states with lower inequality measures than average of the cross-state average of the
inequality, to examine the possible nonlinear impact of financial development on income
inequality. We find robust results whereby financial development linearly increases income
inequality for the 50 states. When we divide 50 states into two separate groups of higher and
lower inequality states than the cross-state average inequality, the effect of financial
development on income inequality appears non-linear. When financial development improves,
the effect increases at an increasing rate for high income inequality states, whereas an
inverted U-shaped relationship exists for low-income inequality states. |
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