This course aims at describing the advanced level topics in statistical methods and statistical inference. This course would prepare students to have a strong base in basic statistics that would help them in undertake basic and applied research in Statistics.
Course |
Learning outcomes (at course level |
Learning and teaching strategies |
Assessment Strategies
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Paper Code |
Paper Title |
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STT321 |
Statistical Inference-I (Theory)
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The students will be able to –
CO50: Know the notion of a parametric model and point estimation of the parameters of those models. CO51: Demonstrate computational skills to implement various statistical inferential approaches. CO52: Explain in detail elements of statistical decision problems and various inference problems viewed as decision problem. CO53: Explain in detail approaches to include a measure of accuracy for estimation procedures and our confidence in them by examining the area of interval estimation. CO54: Choose appropriate methods of inference to tackle real problems. |
Approach in teaching: Interactive Lectures, Group Discussion, Classroom Assignment Problem Solving Sessions
Learning activities for the students: Assignments Seminar Presentation Subject based Activities |
Classroom Quiz Assignments Class Test Individual Presentation |
Location Invariance, scale invariance. Pitmann’s estimators for location and scale parameters. Pitman concept of closeness of estimator. Proof of the properties of M.L.E(large samples), Huzur Bazaar theorem
Consistent asymptotic normal (CAN) estimator, invariance property of likelihood estimator. Wilks likelihood ratio criteria and the various test based on it.
Asymptotic distribution of likelihood ratio statistic. Bartlett's test for homogeneity of variances. Randomized tests. Generalized Neyman- Pearson lemma.
Uniformly most powerful tests for two-sided hypothesis. Unbiased tests. Uniformly most powerful unbiased tests, Generalized likelihood ratio test-mean and variance. Tests with Neyman’s Structures and its relation with complete family of distributions.
Basic Elements of Statistical Decision Problem. Various inference problems viewed as decision problem. Randomization optimal decision rules. Bayes and minimax decision rule. ε-bayes & minimax decision rule, Generalized Bayes rule.