Deep Learning, Statistical Learning
QST MF 850
Graduate Prerequisites: (QSTMF796) - This course explores algorithmic and numerical schemes used in practice for the pricing and hedging of financial derivative products. The focus of this course lies on data analysis. It covers such topics as: stochastic models with jumps, advanced simulation methods, optimization routines, and tree-based approaches. It also introduces machine learning concepts and methodologies, including cross validation, dimensionality reduction, random forests, neural networks, clustering, and support vector machines. (Mathematical Finance courses are reserved for students enrolled in the Mathematical Finance program.)
FALL 2024 Schedule
Section | Instructor | Location | Schedule | Notes |
---|---|---|---|---|
D1 | Reppen | HAR 224 | R 12:30 pm-3:15 pm | Reserved for MSMFT students |
FALL 2024 Schedule
Section | Instructor | Location | Schedule | Notes |
---|---|---|---|---|
D2 | HAR 224 | T 3:30 pm-6:15 pm |
Note that this information may change at any time. Please visit the MyBU Student Portal for the most up-to-date course information.