Statistics
This is an archived copy of the 2020-21 catalog. To access the most recent version of the catalog, please visit http://bulletin.ndsu.edu.
Program Description
The Department of Statistics offers programs leading to a Ph.D. in statistics or a master's degree in applied statistics. The program is flexible enough to be individually planned around prior experience and in accord with professional goals.
During the first year of the program, students are strongly encouraged to meet with each faculty member to discuss possible research topics. The student should select an advisory and examining committee by the end of the first year.
A joint master's degree in computer science and statistics may also be obtained. A graduate certificate in Statistics for non majors is also offered.
Graduate Certificate
- B.S. or equivalent degree from an accredited university,
- Knowledge of College Algebra
Master's Program in Applied Statistics
In addition to the Graduate School requirements, the applicant must:
- Have had at least one year of calculus,
- Have had at least one course in statistics, and
- Have had at least one programming language
Joint Master's Program in Computer Science and Statistics
To be admitted with full status into the M.S. program in computer science and statistics, the applicant must satisfy the admission requirements for both the M.S. program in computer science and the M.S. program in applied statistics.
Ph.D. Program in Statistics
In addition to the Graduate School requirements, the applicant must:
- Have an M.S. degree in statistics or related area
Students not holding a master's degree in statistics or a closely related field will not be admitted to the Ph.D. program in statistics. These students must first apply to the M.S. program in applied statistics and complete the M.S. degree.
Ph.D. Program in Statistics (with Emphasis in Sports Statistics)
In addition to the Graduate School requirements, the applicant must:
- Have an M.S. degree in statistics or related area and some knowledge or interest in sports
Financial Assistance
Teaching assistantships are available. To be considered for an assistantship, the application must be complete with the Graduate School no later than March 15.
Statistics Certificate
The graduate certificate requires 12 semester credit hours consisting of graduate level courses in statistics. STAT 725 needs to be the first course taken for students with little or no prior knowledge of statistics. No credit will be given for STAT 725 for the certificate if it is not the first course taken. Students in the certificate program should not take both STAT 661 and STAT 726. STAT 726 is recommended. Also, students in this program should not take both STAT 670 and STAT 671. After completing the requirements for the certificate, please contact the Department of Statistics to verify completion.
Code | Title | Credits |
---|---|---|
STAT 670 | Statistical SAS Programming | 3 |
STAT 671 | Introduction to the R Language | 3 |
STAT 725 | Applied Statistics (must be taken first or no credit will be given) | 3 |
STAT 726 | Applied Regression and Analysis of Variance | 3 |
or STAT 661 | Applied Regression Models | |
Total Credits | 12 |
Big Data Statistical Analysis Certificate
Graduate Certificate
Certificate: Big Data Applied Statistics Analysis
Required Credits: 12
Code | Title | Credits |
---|---|---|
STAT 712 | Applied Statistical Machine Learning | 3 |
STAT 711 | Basic Computational Statistics using R | 3 |
STAT 713 | Introduction to Data Science | 3 |
STAT 714 | Statistical Big Data Visualization | 3 |
Total Credits | 12 |
Master of Science in Applied Statistics
The program for the M.S. degree in applied statistics requires 32 semester credits with an overall GPA of 3.0 or higher. An oral defense of a research-based thesis or paper is required.
Code | Title | Credits |
---|---|---|
Complete a set of core courses* with a grade of B or better, including | ||
STAT 661 | Applied Regression Models | 3 |
STAT 662 | Introduction to Experimental Design | 3 |
STAT 764 | Multivariate Methods | 3 |
or STAT 774 | Generalized Linear Models | |
STAT 767 | Probability and Mathematical Statistics I | 3 |
STAT 768 | Probability and Mathematical Statistics II | 3 |
Successfully complete two 1-credit practicums in consulting. Each statistical practicum will be listed as STAT 794 | 2 | |
Complete an additional 9-12 hours (depends on number of research hours) of course work selected from the following courses: | 9-12 | |
Applied Survey Sampling | ||
Nonparametric Statistics | ||
Discrete Data Analysis | ||
Introduction to Biostatistics | ||
Statistical SAS Programming | ||
Introduction to the R Language | ||
Time Series | ||
Actuarial Statistical Risk Analysis | ||
Introductory Survival and Risk Analysis I | ||
Introductory Survival and Risk Analysis II | ||
Biostatistics | ||
Introduction to Bioinformatics | ||
Survival Analysis | ||
Using Statistics in Sports | ||
Advanced Inference | ||
Special Topics | ||
Bayesian Statistical Inference | ||
Applied Spatial Statistics | ||
Master's Thesis | ||
or STAT 797 | Master's Paper | |
Must have 15 hours of 700-800 level courses. |
*If one of these courses has been taken at the undergraduate level, another graduate level course should be substituted. STAT 725 Applied Statistics and STAT 726 Applied Regression and Analysis of Variance will not be counted for this degree program.
- A plan of study must be submitted at least one semester prior to graduation.
- Pass a written comprehensive exam. This exam consists of two sections. Exam 1 covers STAT 767 Probability and Mathematical Statistics I and STAT 768 Probability and Mathematical Statistics II. Exam 2 covers STAT 661 Applied Regression Models, STAT 662 Introduction to Experimental Design and STAT 764 Multivariate Methods or STAT 774 Generalized Linear Models. Exam 1 is two hours and Exam 2 is three hours. These exams are offered during approximately the fifth week of each semester. A maximum of two attempts is allowed.
- Complete and successfully defend the research thesis or paper.
M.S. Degree in Computer Science and Statistics
Code | Title | Credits |
---|---|---|
Statistics Courses | ||
STAT 661 | Applied Regression Models | 3 |
STAT 671 | Introduction to the R Language | 3 |
STAT 669 | Introduction to Biostatistics | 3 |
STAT 772 | Computational Statistics | 3 |
STAT 732 | Introduction to Bioinformatics | 3 |
One additional graduate course in statistics, not including STAT 725 Applied Statistics or STAT 726 Applied Regression and Analysis of Variance | ||
Computer Science Courses | ||
CSCI 713 | Software Development Processes | 3 |
CSCI 724 | Survey of Artificial Intelligence | 3 |
CSCI 732 | Introduction To Bioinformatics | 3 |
CSCI 765 | Introduction To Database Systems | 3 |
Two additional graduate level courses in computer science. | ||
Master's Thesis or Master's Paper Research Credits | ||
Total Credits | 42 |
Ph.D. Degree in Statistics
The program for the Ph.D. degree requires an additional 30 credits of course work beyond the M.S. degree and 30 hours of research. An oral defense of a dissertation is required. All students entering program must have an M.S. degree in statistics or closely related field. Any core course (or similar course) required for the M.S. degree that has not been taken before entering the Ph.D. program, must be taken before obtaining the Ph.D. degree. This may require additional course work beyond the 30 credits depending on the area in which the M.S. degree was obtained.
Successfully complete two 1-credit practicums in Consulting/Presentation Practicum. Each statistical practicum will be listed as STAT 794 Practicum/Internship
Complete at least 30 semester credits of statistics courses at the 600- to 800-level (does not include STAT 725 Applied Statistics STAT 726 Applied Regression and Analysis of Variance). At least 15 credits must be at the 700- to 800-level. Students must take STAT 786 Advanced Inference, STAT 764 Multivariate Methods and STAT 774 Generalized Linear Models if not taken at the M.S. level.
Upon approval by the adviser and advisory committee, up to 9 hours may be taken in Mathematics or Computer Science. It is recommended that a student have knowledge of real analysis at some level such as MATH 650 Real Analysis I.
- A plan of study must be submitted at least one semester prior to graduation.
- Pass a written comprehensive exam. This exam consists of two sections. Exam 1 covers STAT 767 and STAT 768. Exam 2 covers STAT 661, STAT 662 and STAT 764 or STAT 774. Exam 1 is two hours and Exam 2 is three hours. These exams are offered during approximately the fifth week of each semester. A maximum of two attempts is allowed.
- Submit a research proposal and pass an oral exam on the proposal and related topics.
- Complete and successfully defend the research dissertation.
Code | Title | Credits |
---|---|---|
Core Courses | ||
STAT 661 | Applied Regression Models | 3 |
STAT 662 | Introduction to Experimental Design | 3 |
STAT 764 | Multivariate Methods | 3 |
or STAT 774 | Generalized Linear Models | |
STAT 767 | Probability and Mathematical Statistics I | 3 |
STAT 768 | Probability and Mathematical Statistics II | 3 |
Additional statistics courses, not including STAT 725 or STAT 726 | 30 | |
If not taken at the M.S. level, student must take STAT 764, STAT 774, STAT 786. | ||
Doctoral Dissertation | ||
Total | 60 |
Ron Degges, Ph.D.
North Dakota State University, 2011
Field: Sampling, Regression Analysis
Bong-Jin Choi, Ph.D.
University of South Florida 2014
Field: Computational Statistics, Machine Learning, Biostatistics, Public Health Research
Rhonda Magel, Ph.D.
University of Missouri-Rolla, 1982
Field: Nonparametrics, Inference Under Order Restrictions, Regression
Megan Orr, Ph.D.
Iowa State University, 2012
Field: Biostatistics, Gene Expression Analysis, High-Dimensional Data, Analysis and Multiple Testing
Gang Shen, Ph.D.
Purdue University, 2009
Field: Mathematical Statistics, Asymptotic Theory, Bayesian Analysis, Change-Point Problem
Mingao Yuan, Ph.D.
Purdue University, 2018
Field: Network Analysis, Big Data Analysis, Statistical Machine Learning