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Inverse Adaptive Cluster Sampling with Unequal Selection Probabilities: Case Studies on Crab Holes and Arsenic Pollution
Authors:Mohammad Salehi  Mohammad Moradi  Jassim A Al Khayat  Jennifer Brown  Adil Eltayeb Mohamed Yousif
Institution:1. Department of Mathematics, Statistics and Physics, Qatar University, Doha, Qatar;2. Department of Science, Razi University, Kermanshah, Iran;3. Department of Biological & Environmental Sciences, College of Arts and Science, Qatar University, Doha, Qatar;4. Department of Mathematics and Statistics, University of Canterbury, Christchurch, New Zealand
Abstract:Adaptive cluster sampling is an efficient method of estimating the parameters of rare and clustered populations. The method mimics how biologists would like to collect data in the field by targeting survey effort to localised areas where the rare population occurs. Another popular sampling design is inverse sampling. Inverse sampling was developed so as to be able to obtain a sample of rare events having a predetermined size. Ideally, in inverse sampling, the resultant sample set will be sufficiently large to ensure reliable estimation of population parameters. In an effort to combine the good properties of these two designs, adaptive cluster sampling and inverse sampling, we introduce inverse adaptive cluster sampling with unequal selection probabilities. We develop an unbiased estimator of the population total that is applicable to data obtained from such designs. We also develop numerical approximations to this estimator. The efficiency of the estimators that we introduce is investigated through simulation studies based on two real populations: crabs in Al Khor, Qatar and arsenic pollution in Kurdistan, Iran. The simulation results show that our estimators are efficient.
Keywords:Murthy's estimator  Raj's estimator  rare and clustered population  sampling without replacement
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