A New Exponential Type Estimator for the Population Mean in Simple Random Sampling

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Abstract:

‎In this paper‎, ‎a new estimate of exponential type of auxiliary information to help simple random sampling without replacement of the finite population mean is introduced‎. ‎This new estimator with a few other estimates using two real data sets are compared with the mean square error‎.

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Journal title

volume 23  issue 2

pages  11- 15

publication date 2019-03

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