Partial groups ranked set sampling and mean estimation |
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Authors: | Bü?ra Sevinç Selma Gürler Bekir Çetintav |
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Institution: | 1. The Graduate School of Natural and Applied Sciences, Dokuz Eylul University, Izmir, Turkey;2. Department of Statistics, Faculty of Science, Dokuz Eylul University, Izmir, Turkey |
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Abstract: | Ranked set sampling (RSS) is an advanced sampling method which is very effective for estimating mean of the population when exact measurement of observation is difficult and/or expensive. Balanced Groups RSS (BGRSS) is one of the modification of RSS where only the lowest, the median and the largest ranked units are taken into account. Although BGRSS is advantageous and useful for some specific cases, it has strict restrictions regarding the set size which could be problematic for sampling plans. In this study, we make an improvement on BGRSS and propose a new design called Partial Groups RSS which offers a more flexible sampling plan providing the independence of the set size and sample size. Partial Groups RSS also has a cost advantage over BGRSS. We construct a Monte Carlo simulation study comparing the performance of the mean estimators of the proposed sampling design and BGRSS according to their sampling costs and mean squared errors for various type of distributions. In addition, we give a biometric data application for investigating the efficiency of Partial Groups RSS in real life applications. |
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Keywords: | Partial groups ranked set sampling balanced groups ranked set sampling mean estimation cost efficiency |
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