Fall 2025 Statistics GR5291 section 003

ADVANCED DATA ANALYSIS

Call Number 17049
Day & Time
Location
F 5:10pm-7:40pm
To be announced
Points 3
Grading Mode Standard
Approvals Required None
Instructor Demissie Alemayehu
Type LECTURE
Method of Instruction In-Person
Course Description

Course Description

STAT GR5291 Advanced Data Analysis serves as one of the required capstone experiences for MA students in statistics. This course is project-based and covers advanced topics in traditional data analysis. Students are presented with a mix of theory and application in homework assignments.  The final project  is a major contribution to the final grade and is arguably considered the capstone project for the MA in Statistics Program.

Students will learn a myriad of topics related to data analysis and hypothesis testing, and are responsible for application through statistical packages or manual programming. Topics include, exploratory data analysis & descriptive statistics, review of sampling distribution, point estimation, review of hypothesis testing & confidence interval procedures, non-parametric tests, computational methods (Monte Carlo, bootstrap, permutation tests), categorical data analysis, linear regression, diagnostics & residual analysis, robust regression, model selection, non-linear regression & smoothers, aspects of experimental design (ANOVA, two-way ANOVA, blocking, multiple comparisons, ANCOVA, semi-parametric procedures, random effects models, mixed effects models, nested models, repeated measures), and general linear models (logistic regression, penalized logistic, multinomial regression, link functions).

Also, time permitting the class covers: survival analysis (hazard function, survival curve), time series analysis (stationarity, ACF/PACF, MA, AR, ARMA, ARIMA, order selection, forecasting).

Web Site Vergil
Department Statistics
Enrollment 0 students (85 max) as of 1:06PM Monday, June 30, 2025
Subject Statistics
Number GR5291
Section 003
Division Interfaculty
Open To GSAS
Note MA Statistics Students Only; Theory & Methods Track Only in
Section key 20253STAT5291W003