Jul 12, 2025  
2025-2026 Academic Catalog (IN PROGRESS) 
    
2025-2026 Academic Catalog (IN PROGRESS)

EC 414 - Applied Game Theory


Lecture Hours: 3
Lab Hours: 0
Credit Hours: 3

This class introduces students to applying the Nash Equilibrium concept in different informational contexts, from full information to imperfect information to asymmetric information. Further, this class forms part of the core of our decision analytics program by ensuring that practitioners can analyze data with a clear theoretical hypothesis. This class is, therefore, an introduction to applying game theory to making better data-based decisions. In addition to game theory, cadets are introduced to programing machine learning models with R. Prerequisite(s): EC 203  (or math equivalent) with a grade of C or better.