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A note on a difference-type estimator for population mean under two-phase sampling design.

Mursala Khan1, Abdullah Yahia Al-Hossain2.   

Abstract

In this manuscript, we have proposed a difference-type estimator for population mean under two-phase sampling scheme using two auxiliary variables. The properties and the mean square error of the proposed estimator are derived up to first order of approximation; we have also found some efficiency comparison conditions for the proposed estimator in comparison with the other existing estimators under which the proposed estimator performed better than the other relevant existing estimators. We show that the proposed estimator is more efficient than other available estimators under the two phase sampling scheme for this one example; however, further study is needed to establish the superiority of the proposed estimator for other populations.

Entities:  

Keywords:  Auxiliary variable; Bias; Efficiency; Exponential chain-type estimator; Mean squared-error; Study variable; Two phase sampling

Year:  2016        PMID: 27375992      PMCID: PMC4908086          DOI: 10.1186/s40064-016-2368-1

Source DB:  PubMed          Journal:  Springerplus        ISSN: 2193-1801


Background

In survey sampling, the use of the auxiliary information at the estimation stage is widely used in order to obtain improved designs and the precision of an estimator of the unknown population parameter. When the knowledge of the auxiliary variable is used at the estimation stage, the ratio, product and regression methods of estimation are widely employed in these situations. The most important topic which is widely discussed in the various probability sampling schemes is the estimation of the population mean of the study variable. A large number of authors have paid their attention towards the formulation of new or modified estimators for the estimation of population mean, for the case, see Hansen and Hurwitz (1943), Sukhatme (1962), Srivastava (1970), Chand (1975), Cochran (1977), Kiregyera (1980, 1984), Srivastava et al. (1990), Bahl and Tuteja (1991), Singh et al. (2006, 2007, 2011), Singh and Choudhury (2012), Khare et al. (2013), Singh and Majhi (2014) and Khan (2015, 2016) etc.

Symbols and notations

Let us consider a finite population of size N of different units U = {U1, U2, U3, …, U}. Let y and x be the study and the auxiliary variable with corresponding values y and x respectively for the i-th unit i = {1, 2, 3,…, N} defined in a finite population U with means and of the study as well as auxiliary variable respectively. Also let and be the population variances of the study and the auxiliary variable respectively and let C and C be the coefficient of variation of the study as well as auxiliary variable respectively, and ρ be the correlation coefficient between x and y. Let y and x be the study and the auxiliary variable in the sample with corresponding values y and x respectively for the i-th unit i = {1, 2, 3…, n} in the sample with unbiased means and respectively. Also let and be the corresponding sample variances of the study as well as auxiliary variable respectively. Let and be the co-variances between their respective subscripts respectively. Similarly is the corresponding sample regression coefficient of y on x based on a sample of size n. Also and are the coefficients of variations of the study and auxiliary variables respectively. Also and

Some existing estimators

Let us consider a finite population U = {U1, U2, U3, …, U} of size N units. To estimate the population mean of the variable of interest say y taking values y, in the existence of two auxiliary variables say x and z taking values x and z for the ith unit U. We assume that there is a high correlation between y and x as compared to the correlation between y and z, (i.e. ρ > ρ > 0). When the population of the auxiliary variable x is unknown, but information on the other cheaply auxiliary variable say z closely related to x but compared to x remotely to y, is available for all the units in a population. In such a situation we use a two phase sampling. In the two phase sampling scheme a large initial sample of size n′ (n′ < N) is drawn from the population U by using simple random sample without replacement sampling (SRSWOR) scheme and measure x and z to estimate . In the second phase, we draw a sample (subsample) of size n from first phase sample of size n′, i.e. (n < n′) by using (SRSWOR) or directly from the population U and observed the study variable y. The variance of the usual simple estimator up to first order of approximation is, given by The classical ratio and regression estimators in two-phase probability sampling and their mean square errors up to first order of approximation are, given by Chand (1975), suggested the following chain ratio-type estimator the suggested estimator is, given by The mean square error of the suggested estimator is, given as Khare et al. (2013), proposed a generalized chain ratio in regression estimator for population mean, the recommended estimator is given bywhere α is the unknown constant, and the minimum mean square error at the optimum value of is, given by Recently Singh and Mahji (2014), suggested a chain-type exponential estimators for given by The mean square errors of the suggested estimators, up to first order of approximation are, given as follows

The proposed estimator

On the lines of Khare et al. (2013), we propose a difference-type estimator for population mean under two-phase sampling scheme using two auxiliary variables; the suggested estimator is, given bywhere k1 and k2 are the unknown constants, To obtain the properties of the proposed estimator we define the following relative error terms and their expectations. Let and , such that Rewriting (16), in terms of e’s, we have Expanding the right hand side of the above equation, and neglecting terms of e’s having power greater than two, we have On squaring and taking expectation on both sides of Eq. (17), and keeping terms up to second order, we have Further simplifying, we get Now to find the minimum mean squared error of t, we differentiate Eq. (18) with respect to k1 and k2 respectively and putting it equal to zero, that iswhere A = θ1C2 + θ2C2, B = θC2 + θ2C2 + 2θ2C, C = θ2C + θ1C, D = θ2C + θC and E = θ1C2 + θ2C2 + θ2C. On substituting the optimum values of k1 and k2 in Eq. (18) we get the minimum mean square error (MSE) of the proposed estimator t up to order one is, given as

Efficiency comparison

In this section, we have compare the propose estimator with the other existing estimators. By Eqs. (1) and (19), By Eqs. (3) and (19) By Eqs. (5) and (19), By Eqs. (7) and (19), By Eqs. (9) and (19), By Eqs. (13) and (19), By Eqs. (14) and (19), By Eqs. (15) and (19),

Numerical comparison

To examine the performance of the proposed estimator with various existing estimators, we have considered a real data set from the literature the description of the population are, given by Population Source, (Cochran 1977). y: Number of placebo children; x: Number of paralytic polio cases in the placebo group; z: Number of paralytic polio cases in the not inoculated group. C2 = 1.0248, C2 = 1.5175, C2 = 1.1492, C = 0.9136, C = 0.6978, ρ = 0.7326, ρ = 0.6430, ρ = 0.6837 (Table 1). We have use the following expression for Percentage Relative Efficiency (PRE)
Table 1

The mean square errors (MSE’s) and the Percent relative efficiencies (PRE’s) of the estimators with respect to t 0

Population
Estimator MSE’s PRE (t 0,t j)
t 0 1.7525100.00
t 1 1.5032116.59
t 2 1.3073134.06
t 3 1.2793137.00
t4 0.9247189.52
t 5 1.1312154.92
t 6 1.0227171.36
t 7 1.0982159.58
t m 0.8206213.56
The mean square errors (MSE’s) and the Percent relative efficiencies (PRE’s) of the estimators with respect to t 0

Conclusion

From the above table, we have observed that the proposed estimator has smaller mean square error and has higher percent relative efficiency than the other existing estimators. However, although the proposed estimator has the highest percent relative efficiency than other existing estimators for this one example, it could have lower relative efficiency for other populations. Further work is needed before it can be recommended for general use in practical surveys.
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