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Data Analysis on the Global Market Capitalization Of Domestic Firms From 2013 To 2023

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  • Chaturvedi, Archit

Abstract

In this report, a dataset providing information with respect to the market capitalization of companies globally based on different regions across the world by year was analyzed through the use of advanced analytics and data visualization techniques in Python. These regions were the Americas, Asia-Pacific, and the EMEA, as well as the comprehensive data of the total global market capitalization. The data was analyzed from years 2013 to 2023, with 2020 being excluded from the dataset. Four distinct polynomial regression models with degree n=4 were formulated and provided to predict future values of market capitalization based on region, as well as the total global market capitalization. Furthermore, the market capitalizations of each region, as well as the total market capitalization, were correlated with one another to determine the relationship between the market capitalizations of one region with another, as well as the correlation between the market capitalization of each region with the total global market capitalization, which rendered strong positive correlations between the market capitalization of each region with one another, as well as with the total global market capitalization.

Suggested Citation

  • Chaturvedi, Archit, 2023. "Data Analysis on the Global Market Capitalization Of Domestic Firms From 2013 To 2023," OSF Preprints 9rzq2, Center for Open Science.
  • Handle: RePEc:osf:osfxxx:9rzq2
    DOI: 10.31219/osf.io/9rzq2
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