Description: |
[DMS Seminar] Dr. Sumanta Adhya (West Bengal State University, Barasat, India) -- Model-Based Inference for Finite Population Distribution |
Date: |
Friday, Apr 20, 2018 |
Time: |
4:15 p.m. - 5:15 p.m. |
Venue: |
G09, Lecture Hall Complex |
Details: |
This talk mainly focuses on efficient estimation of finite population distribution of a survey variable (both
categorical and continuous) by adopting model-based (or, predictive) approach to survey inference when
one or more auxiliary variables are known for the whole finite population. Traditional survey estimators
are design-based and the basis of inference is repeated sampling from the finite population. When
auxiliary information is available, a stochastic relation between response and auxiliary variables (called
superpopulation model) is used to increase the precision of the estimators within design-based framework.
The main feature of these estimators are their model-robust property; that is, they are either exactly or
approximately design-unbiased irrespective of underlying models. Instead of design-based approach we consider a standard prediction problem that predicts unknown finite population quantity given all
available information; that is, values of sample responses, complete auxiliary information and the
underlying model. This approach is seriously criticized for its heavy model dependency. We find a way
around by developing predictors which either depend on nonparametric regression models or are based on
parametric regressions equipped with a simple model selection procedure. We also introduce bootstrap
based hybrid variance estimators of the predictors. These hybrid estimators avoid computational burden
of bootstrapping in finite population set-up by including positive features of analytical estimators
partially. |
Calendar: |
Seminar Calendar (entered by sushil.gorai) |