A course in the theory of statistics which will provide students with a basic foundation for more specialized statistical methodology courses. Topics include sampling and sampling distributions; point estimation including method of moments, maximum likelihood estimation, uniform minimum variance estimation and properties of the associated estimators; confidence intervals; hypothesis testing including uniformly most powerful, likelihood ratio approaches, chi-square tests for goodness-of-fit and independence. The course will conclude with an introduction to linear statistical models.
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| 2023 | ||||
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| 2017 |
Mathematical Statistics (4c)
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| 2016 |
Mathematical Statistics (4c)
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| 2015 |
Mathematical Statistics (4c)
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| 2014 |
Mathematical Statistics (4c)
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| 2013 |
Mathematical Statistics (4c)
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| 2012 |
Mathematical Statistics (4c)
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| 2011 |
Mathematical Statistics (4c)
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