Quantitative Data Analysis in Finance
FIN 580
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The course gives a broad introduction to the techniques of machine learning, and places those techniques within the context of computational finance. Topics include parametric and non-parametric regression, and supervised learning techniques. Methods covered include regularized linear models in high dimensions (LASSO family), Ensemble methods (Bagging and Boosting), Regression Trees/Random Forests/Boosted Trees, Neural Networks/Deep Learning, Classification methods, Clustering. We also discuss the implementation of dimension reduction techniques, including principal components analysis. Examples are taken from financial models.
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Section L01
- Type: Lecture
- Section: L01
- Status: O
- Enrollment: 17
- Capacity: 48
- Class Number: 40141
- Schedule: F 09:00 AM-12:00 PM - Julis Romo Rabinowitz Building 101
Section P01
- Type: Precept
- Section: P01
- Status: O
- Enrollment: 17
- Capacity: 50
- Class Number: 40142
- Schedule: M 06:00 PM-07:20 PM - Julis Romo Rabinowitz Building 101