Theory and practice of statistical prediction. Contemporary methods as extensions of classical methods. Topics - optimal prediction rules, the curse of dimensionality, empirical risk, linear regression and classification, basis expansions, regularization, splines, the bootstrap, model selection, classification and regression trees, boosting, support vector machines. Computational efficiency versus predictive performance. Emphasis on experience with real data and assessing statistical assumptions.
Details
- Department: Statistics (STAT)
- Units: 4
- Prerequisites: MATH 53, MATH 54, STAT 135, MATH 55
- Tools: R or Python
- Cluster(s): Mathematics/Statistics Computer Science
- Tags: Foundational Applied