Confidence regions based on inefficient estimators |
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Authors: | Eva Fišerová |
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Affiliation: | 1. Faculty of Science, Department of Mathematical Analysis and Applications of Mathematics , Palacky University Olomouc , Olomouc, Czech Republic fiserova@inf.upol.cz |
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Abstract: | We consider an unbiased estimator of a function of mean value parameters, which is not efficient. This inefficient estimator is correlated with a residual vector. Thus, if a unit dispersion is unknown, it is impossible to determine the correct confidence region for a function of mean value parameters via a standard estimator of an unknown dispersion with the exception of the case when the ordinary least squares (OLS) estimator is considered in a model with a special covariance structure such that the OLS and the generalized least squares (GLS) estimator are the same, that is the OLS estimator is efficient. Two different estimators of a unit dispersion independent of an inefficient estimator are derived in a singular linear statistical model. Their quality was verified by simulations for several types of experimental designs. Two new estimators of the unit dispersion were compared with the standard estimators based on the GLS and the OLS estimators of the function of the mean value parameters. The OLS estimator was considered in the incorrect model with a different covariance matrix such that the originally inefficient estimator became efficient. The numerical examples led to a slightly surprising result which seems to be due to data behaviour. An example from geodetic practice is presented in the paper. |
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Keywords: | confidence region generalized least squares estimator inefficient estimator ordinary least squares estimator singular linear model unbiased estimator |
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