Mathematical modeling of systemic geopolitical analysis: an approach to the analysis and prediction of geopolitical risk using quantitative methods

Abstract

In this dissertation, a structured proposal for the mathematical modeling of Systemic Geopolitical Analysis is submitted. The main goal is to investigate the mathematical modeling of Systemic Geopolitical Analysis in steps, which will include and integrate quantitative data analysis methods in Systemic Geopolitical Analysis. The harmonious connection between theoretical knowledge and practical application translates into an extension of the research on the harmonious operation and coexistence between qualitative and quantitative methods of analysis in a single framework, which will emphasize the interdisciplinary nature of the method and contribute to effective geopolitical risk analysis.

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DOI
10.12681/eadd/49210
Handle URL
http://hdl.handle.net/10442/hedi/49210
ND
49210
Alternative title
Μαθηματική προτυποποίηση της συστημικής γεωπολιτικής αναλύσεως: μια προσέγγιση της ανάλυσης και πρόβλεψης γεωπολιτικού ρίσκου με την χρήση ποσοτικών μεθόδων
Author
Digkas, Agis-Georgios (Father's name: Konstantinos)
Date
2021
Degree Grantor
National and Kapodistrian University of Athens
Committee members
Μάζης Ιωάννης
Δάρας Νικόλαος
Γρίβας Κωνσταντίνος
Κορρές Γεώργιος
Σιδηρόπουλος Γεώργιος
Ηλιόπουλος Ηλίας
Σγούρος Γεώργιος-Αλέξανδρος
Discipline
Social SciencesPolitical Science ➨ International Relations
Keywords
Geopolitics; Risk analysis; Geopolitical risk analysis; Quantitative methods
Country
Greece
Language
Greek
Description
326 σ., im., tbls., fig., ch.
Rights and terms of use
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