STAT_V 406 - L1B
Methods for Statistical Learning
Flexible, data-adaptive methods for regression and classification models; regression smoothers; penalty methods; assessing accuracy of prediction; model selection; robustness; classification and regression trees; nearest-neighbour methods; neural networks; model averaging and ensembles; computational time and visualization for large data sets. [3-0-1] Prerequisite: a) One of STAT_V 306, CPSC_V 340, or b) STAT_V 301 and one of MATH_V 152, MATH_V 221, MATH_V 223 and one of MATH_V 302, STAT_V 302.
- Section
- STAT_V 406 -L1B
- Campus
- Vancouver
- Delivery Mode
- In person
- Term
- 2025-26 Winter Term 1 (UBC-V)
- Instructional Format
- Laboratory
- Credits
- 3.00
- Start Date
- End Date
- Days
- Thursday
- Start Time
- 02:00 pm
- End Time
- 03:00 pm