Setting confidence intervals by ratio estimator |
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Authors: | Arijit Chaudhuri Joydip Mitra |
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Affiliation: | Computer Science Unit , Indian Statistical Institute , Calcutta, 700035, India203 B.T, Road |
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Abstract: | For the survey population total of a variable y when values of an auxiliary variable x are available a popular procedure is to employ the ratio estimator on drawing a simple random sample without replacement (SRSWOR) especially when the size of the sample is large. To set up a confidence interval for the total, various variance estimators are available to pair with the ratio estimator. We add a few more variance estimators studded with asymptotic design-cum-model properties. The ratio estimator is traditionally known to be appropriate when the regression of y on x is linear through the origin and the conditional variance of y given x is proportional to x. But through a numerical exercise by simulation we find the confidence intervals to fare better if the regression line deviates from the origin or if the conditional variance is disproportionate with x. Also, comparing the confidence intervals using alternative variance estimators we find our newly proposed variance estimators to yield favourably competitive results. |
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Keywords: | Asymptotic analysis Confidence interval Ratio estimator Robustness Simple random sampling simulation Super-population model Survey population Variance estimator |
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