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Detailed information |
Pre-requisites |
(*)keine
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Original study plan |
Bachelor's programme Statistics 2012W |
Objectives |
To understand and learn techniques of Mathematical Statistics. To develop the ability of proper application of these methods.
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Subject |
Properties of sample. Sums of random variables. Sampling from Normal distribution. Order statistics. Random generator. Principles of Data Reduction -sufficiency, likelihood, equivariance principle. Point estimation, estimation. Moment estimator, MLE, Bayes-estimator. Methods for evaluation of estimators (MSE,Bias) Best unbiased estimator, (Frechét-)Cramér-Rao inequality. Fisher-Information. Rao-Blackwell Theorem. Sufficient Statistics. Uniqueness of estimator and Lehmann-Scheffé Theorem. Complete Statistics. Loss functions and Risk. Bayes Risk. Hypothesis testing. Methods for Evaluation of
Tests: Likelihood ratio test (LRT). LRT and nuisance parameter. LRT and Sufficiency. Bayes-Tests. Power function. Size of tests. Unbiased Tests. UMP Tests. Neyman-Pearson Lemma. Karlin-Rubin Theorem. Monotone LRT, stochastic Ordering. p-Values. Fisher Exact Test.
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Criteria for evaluation |
Exam.
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Methods |
Lecture.
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Language |
German |
Study material |
G. Casella and R.L. Berger, „Statistical Inference“, 2nd edition, Duxbury Advanced Series
Robert Hafner, Wahrscheinlichkeitsrechnung und Statistik, Springer Verlag, 1989
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Changing subject? |
No |
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