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MATH 674: Introduction
to Mathematical Statistics (Spring
2007)
Instructor:
Michael Nussbaum
Meeting
Time & Room
4 credits. Prerequisites: MATH 671 (measure theoretic probability) and
OR&IE 670, or permission of instructor.
Required textbooks:
- Wasserman, L., All of Statistics.
A Concise Course in Statistical Inference. Springer Verlag, 2004.
- Course packet: Nussbaum, M., Selected Topics in Mathematical
Statistics. Cornell University, 2006.
Optional textbook: Wasserman, L., All of
Nonparametric Statistics, Springer,
New York 2006.
Abstract: Topics include an introduction to the theory
of point estimation, hypothesis testing and confidence intervals, consistency,
efficiency, and the method of maximum likelihood. Basic concepts of decision
theory are discussed; the key role of the sufficiency principle is highlighted
and applications are given for finding Bayesian, minimax and unbiased optimal
decisions. Modern computer intensive methods like the bootstrap will receive
some attention, as well as simulation methods involving Markov chains.
The parallel development of some concepts of machine learning will be exemplified
by classification algorithms. An optional section may include nonparametric
curve estimation and elements of large sample asymptotics.
Last modified:October 31, 2006
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