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An Optimum Multivariate-Multiobjective Stratified Sampling Design: Fuzzy Programming Approach
Author(s):
1. Rahul Varshney: Department of Applied Statistics Babasaheb Bhimrao Ambedkar University, Lucknow-226 025, India
2. Srikant Gupta: Department of Statistics and Operations Research Aligarh Muslim University, Aligarh-202 002, India
3. Irfan Ali: Department of Statistics and Operations Research Aligarh Muslim University, Aligarh-202 002, India
Abstract:
In stratified sampling design when the cost of measuring the units is not significant in each stratum, the estimation of population mean or total constructed from a selected sample according to Neyman allocation is advisable. In general the practical use of Neyman allocation suffers from a number of limitations, when there is no information about strata standard deviations except about the equality of standard deviations between some of the strata, then the precision of the estimate may be increased by pooling the strata with equal standard deviations as a single stratum and the problem of allocation is resolved by using Neyman and proportional allocations simultaneously. In this paper the case of multiple pooling of the standard deviations of the estimates in a multivariate stratified sampling for more than three strata. The problem is formulated as a Multiobjective Nonlinear Programming Problem and its solution procedure is suggested by using Fuzzy Programming approach.
Page(s): 829-855
DOI: DOI not available
Published: Journal: Pakistan Journal of Statistics and Operation Research, Volume: 13, Issue: 4, Year: 2017
Keywords:
Fuzzy Programming , Pooled Standard Deviations , Multiobjective Nonlinear Programming , Compromise allocation , Multivariate stratified sampling , Multiple Pooling
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