Statistics 540 - Intro/Statistical Learning

Fall
2024
01
3.00
Maryclare Griffin

TU TH 10:00AM 11:15AM

UMass Amherst
36777
Lederle Grad Res. Ctr rm A201
maryclaregri@umass.edu
36770
Introduction to some modern statistical regression and classification techniques including logistic regression, nearest neighbor methods, discriminant analysis, kernel smoothing, smoothing spline, local regression, generalized additive models, decision trees, random forests, support vector machines and deep learning. Clustering methods such as K-means and hierarchical clustering will be introduced. Finally, there will also topics on resampling-based model evaluation methods and regularization-based model selection methods. The course emphasizes the mathematics behinds these methods sufficient to understand the differences among the methods as well as the practical implementation of them.

STATISTC 525

Permission is required for interchange registration during the add/drop period only.