Statistics 528
Introduction to Mathematical Statistics
Spring 2007
Instructor: Chong Gu
Classes: 2:30 - 3:20 MWF, LWSN B134
Office Hours: 1:20 - 2:20 MWF, HAAS 170, or by appointment
Here is the key to the final.
- Course outline
- This course introduces the basic concepts and techniques in
mathematical statistics. We will start with a review of basic
probability theory, then delve into the formulations of problems,
the estimation techniques, and the hypothesis testing
techniques. Among topics to be covered are normal and derivative
(chi-square, F, and t) distributions, exponential families,
sufficiency, unbiased estimation and information inequality,
maximum likelihood estimation and its efficiency, confidence
intervals and hypothesis testing, log likelihood ratio tests,
asymptotic approximations, etc. There will also be brief
discussions of Bayesian methods and decision theory.
- Prerequisite
- Basic probability theory (STAT 519 or equivalent). Working
knowledge of advanced calculus, linear algebra, and matrix theory.
- Textbook
-
- Mathematical Statistics (2nd ed.), by Bickel and Doksum
- References
-
- Statistical Inference, by Casella and Berger.
- Theoretical Statistics, by Cox and Hinkley.
- Introduction to Mathematical Statistics, by Hogg and Craig.
- Linear Statistical Inference and Its Applications, by
Rao.
- Statistical Inference, by Silvey.
- Course Work
- Weekly/biweekly homework problems will be assigned through the
semester, accounting for 30\% of the course grade.
There will be two midterm exams, each accounting for 20\% of
the course grade, and a final exam, accounting for 30\% of the
course grade.
You are encouraged to discuss with each other on the homework
assignments, but you are expected to do your independent
work.
- Lecture Notes
- Homework Assignments
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