Journal Article10.1007/S11222-012-9339-3
Robust model-based sampling designs
Alan H. Welsh,Douglas P. Wiens +1 more
TL;DR: This work investigates methods for the design of sample surveys, and addresses the traditional resistance of survey samplers to the use of model-based methods by incorporating model robustness at the design stage, yielding an optimally robust (‘minimax’) design.
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Abstract: We investigate methods for the design of sample surveys, and address the traditional resistance of survey samplers to the use of model-based methods by incorporating model robustness at the design stage. The designs are intended to be sufficiently flexible and robust that resulting estimates, based on the designer's best guess at an appropriate model, remain reasonably accurate in a neighbourhood of this central model. Thus, consider a finite population of N units in which a survey variable Y is related to a q dimensional auxiliary variable x. We assume that the values of x are known for all N population units, and that we will select a sample of n≤N population units and then observe the n corresponding values of Y. The objective is to predict the population total $T=\sum_{i=1}^{N}Y_{i}$ . The design problem which we consider is to specify a selection rule, using only the values of the auxiliary variable, to select the n units for the sample so that the predictor has optimal robustness properties. We suppose that T will be predicted by methods based on a linear relationship between Y--possibly transformed--and given functions of x. We maximise the mean squared error of the prediction of T over realistic neighbourhoods of the fitted linear relationship, and of the assumed variance and correlation structures. This maximised mean squared error is then minimised over the class of possible samples, yielding an optimally robust (`minimax') design. To carry out the minimisation step we introduce a genetic algorithm and discuss its tuning for maximal efficiency.
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References
Smearing Estimate: A Nonparametric Retransformation Method
TL;DR: The smearing estimate as discussed by the authors is a nonparametric estimate of the expected response on the untransformed scale after fitting a linear regression model on a transformed scale, which is consistent under mild regularity conditions, and usually attains high efficiency relative to parametric estimates.
2.2K
Estimating distribution functions from survey data
Ray Chambers,R. Dunstan +1 more
TL;DR: In this article, a simple method for estimating population distribution functions and associated quantiles from sample survey data is described and some asymptotic theory for it presented, which assumes a model-based approach to survey estimation and allows auxiliary population information to be directly incorporated into the estimation process.
283
•Book
Elements of Statistical Computing: NUMERICAL COMPUTATION
Ronald A. Thisted
- 01 Mar 1988
TL;DR: Elements of Statistical Computing provides a comprehensive account of the most important computational statistics, including iterative methods for both linear and nonlinear equation, such as Gauss-Seidel method and successive over-relaxation.
216
Integer-Valued, Minimax Robust Designs for Estimation and Extrapolation in Heteroscedastic, Approximately Linear Models
Zhide Fang,Douglas P. Wiens +1 more
TL;DR: In this article, the authors present a new approach to robust regression design using a finite design space, the use of simulated annealing to carry out the numerical minimization problems, and in search for integer-valued, rather than continuous, designs.
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