Global Finance Trends on African Markets: Dynamism and Current Characterizations
DOI:
https://doi.org/10.56919/usci.2541.023Keywords:
Financial markets, Arbitrage, Nexus, Overvalued assets, Market energy, Market characterizationAbstract
Study’s Excerpt:
• How global finance trends are shaping African markets at present is presented.
• African market current dynamism and characterizations for affected countries to take advantage in development finance are stated.
• Nigeria as extremely Bearish and South Africa as a Bull Upturn at the moment is shown.
• How Nigeria can achieve the Range-Bound status and state the path dynamics is exemplified.
• The dynamics combining mathematical dynamics, modeling and mathematical finance combined is shown.
Full Abstract:
We examine the dynamics of market arbitrage, energies and performance using commodity price (s), portfolio (p) and value of investment(v) to investigate current trends and their implications on economic growth of African countries. We delve into several market inefficiencies like pricing arbitrage and how they impact opportunities and invest- ment returns to provide novel insights into the characterizations of Africa’s markets and their influence on global finance assuming that the three entities (spv) are independent and identically distributed with each other on a rotating S to formulate a nexus of triple finance things (si(t), pj (t), vk(t)) and state the properties of associated mar- ket index. Our analysis leads to the construction of useful financial market characterization policies vital for securing financial transactions against shocks with random energy distributions across the continent.
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Copyright (c) 2025 Sulaiman Sani, Usman Sanusi, Petrovious Horton, Peter Mhone Yavizu, Onkabetse A Daman

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