A BAYESIAN APPROACH TO COMPUTING MISSING REGRESSOR VALUES
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Abstract:
In this article, Lindley's measure of average information is used to measure the information contained in incomplete observations on the vector of unknown regression coefficients [9]. This measure of information may be used to compute the missing regressor values.
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a bayesian approach to computing missing regressor values
in this article, lindley's measure of average information is used to measure the information contained in incomplete observations on the vector of unknown regression coefficients [9]. this measure of information may be used to compute the missing regressor values.
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Journal title
volume 4 issue 2
pages -
publication date 1993-06-01
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