UNVEILING AFFLUENCE: A BIG DATA PERSPECTIVE ON WEALTH ACCUMULATION AND DISTRIBUTION
DOI:
https://doi.org/10.55640//ijmcsit-v02i06-03Keywords:
Wealth accumulation, wealth distribution, big data analytics, socioeconomic analysisAbstract
The global landscape of wealth distribution is characterized by significant disparities, with a growing concentration of wealth at the apex. This article presents a comprehensive big data analysis of wealth accumulation patterns, aiming to uncover the multifaceted factors contributing to extreme wealth and its implications. Leveraging a large dataset of global billionaires, we investigate the "5 Vs" of big data—Volume, Velocity, Variety, Veracity, and Value—to systematically examine trends, drivers, and societal impacts. Our findings illuminate the complex interplay of economic, social, and technological forces in shaping wealth dynamics, offering insights into the institutional drivers, sectoral influences, and individual attributes associated with extraordinary wealth. The study contributes to the ongoing discourse on wealth inequality by providing an empirical, data-driven perspective on a critical contemporary issue.
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