Title of article :
An improved approach to multivariate linear calibration
Author/Authors :
Muhammad, F Faculty of Administrative Sciences - Air University, E-9, Islamabad, Pakistan , Riaz, M Department of Mathematics and Statistics - King Fahd University of Petroleum and Minerals, Dhahran 31261, Saudi Arabia
Pages :
15
From page :
1355
To page :
1369
Abstract :
The article presents an approach to multivariate linear calibration based on the best linear predictor. The bias and mean squared error for the suggested predictor are derived in order to examine its properties. It has been examined that Bias=2 and MSE=2 are functions of fve invariant quantities. A simulation study is made for different values of response variables and sample sizes assuming different distributions for the explanatory variable. It is observed that the proposed estimator performs quite well. Some approximations to mean squared error have been suggested and the pivotal functions based on these approximations have been defned. Lower and upper tail probabilities have been calculated and it is examined that they are quite reasonable. These probabilities suggest that the relevant intervals have sensible confdence coefcient. Moreover, it is also shown that the multivariate classical and inverse estimators are special cases of the proposed estimator.
Keywords :
Best linear predictor , Bias , Intervals , Mean squared error
Journal title :
Astroparticle Physics
Serial Year :
2016
Record number :
2419720
Link To Document :
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