Location
CoLab, OCB 100
Start Date
25-4-2024 9:00 AM
Document Type
Poster
Description
Unlocking the mysteries of March Madness, this study delves into predicting NCAA tournament winners using dynamical systems theory. By treating teams as dynamic entities influenced by player skills, coaching strategies, and game dynamics, we aim to capture the complexity of tournament outcomes. Leveraging advanced analytics and machine learning, our approach seeks to uncover hidden patterns and enhance predictive accuracy. Join us on a journey to unravel the unpredictable nature of collegiate basketball and revolutionize tournament forecasting.
Unveiling March Madness: Predicting NCAA Tournament Winners with Dynamical Systems
CoLab, OCB 100
Unlocking the mysteries of March Madness, this study delves into predicting NCAA tournament winners using dynamical systems theory. By treating teams as dynamic entities influenced by player skills, coaching strategies, and game dynamics, we aim to capture the complexity of tournament outcomes. Leveraging advanced analytics and machine learning, our approach seeks to uncover hidden patterns and enhance predictive accuracy. Join us on a journey to unravel the unpredictable nature of collegiate basketball and revolutionize tournament forecasting.

Comments
The faculty mentor for this project was Brenda Edmonds, Mathematics.