This is an advanced course in Sampling Techniques that aims at describing some advanced level topics for students who wish to pursue research in Sampling Techniques. This course prepares students for undertaking research in this area. This also helps prepare students for applications of this important subject to the Statistical System in the country.
Course |
Course Outcomes |
Learning and teaching strategies |
Assessment Strategies |
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Course Code |
Course Title |
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24STT423(B) |
Advanced Sample Surveys (Theory) |
CO 136: Evaluate estimation methods with varying probabilities and analyze the Narain-Horvitz-Thompson estimator incorporating inclusion probabilities. CO 137: Analyze the estimation of variance for the Horvitz-Thompson estimator, Midzuno Sampling scheme and Rao-Hartley-Cochran sampling scheme. CO 138: Explore Brewer’s sampling design and its multivariate extensions for ratio and regression estimates, evaluating their optimal properties. CO 139: Examine subsampling techniques using varying probabilities with and without replacement along with Naraine Sukhatme sampling schemes I and II. CO 140: Investigate double sampling in regression estimation, successive sampling for multiple occasions, and introduce super population concepts and models to understand population dynamics and sampling strategies. CO 141: Contribute effectively in course-specific interaction. |
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. |
Varying probabilities and without replacement. Des Raj ordered estimates, Murthy’s unordered estimates (general cases), estimation of linear classes of estimates, Narain-Horvitz-Thompson’s estimator and variance. Inclusion probabilities(n=2).
Estimation of variance of Horvitz-Thompson estimator, Horvitz-Thompson, Yates-Grundy, Sen-Midzuno’s results, Midzuno Sampling scheme. Rao-Hartley-Cochran sampling scheme.
Brewer’s sampling design, multivariate extensions of ratio and regression estimates. Optimal properties of ratio and regression method of estimation.
Sub sampling using varying probabilities with and without replacement: unbiased estimator, its variance and estimates of the variance, Durbin’s result. Naraine Sukhatme sampling schemes I and II.
Double sampling in regression estimation, successive sampling for h ≥ 2 ocassions. Super population concepts and super population models (introduction).
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