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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Journal title

volume 4  issue 2

pages  -

publication date 1993-06-01

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