Statistics
STAT 5113: Categorical Data Analysis
Offered: Fall
Statistical tools to analyze univariate and multivariate categorical responses. Emphasis
is given to Generalized Linear Models, including logistic regression and loglinear
models.
STAT 5153: Experimental Design Analysis
This course introduces students to both design and analysis of experiments as well as statistical computing. Emphasis is given to develop an understanding of experimental methods and major experimental designs. Students will be required to design and carry out an experiment, use a current statistical software package to analyze the data, and make inferences based upon the analysis.
STAT 5383: Machine Learning
Offered: Fall
The focus of the course is an accessible overview of the field of machine learning
and provide the students with valuable hands-on experience by illustrating how to
implement each of the machine learning methods using Python. Topics covered include
Decision Tree, Support Vector Machines, and the kernel methods, AdaBoost and GBDT
method, Logistic regression, and neural network, and more.
STAT 5393: Statistical Learning
Offered: Spring
This course is directed towards advanced undergraduates or master's students in statistical
or related quantitative fields. The focus of the course is an accessible overview
of the field of statistical learning and provide the students with valuable hands-on
experience by illustrating how to implement each of the statistical learning methods
using R or other statistical programming language. Topics covered include: regression
techniques, classification methods, linear model selection and regularization, unsupervised
learning, and more.