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Prediction from a normal model using a generalized...
Journal article

Prediction from a normal model using a generalized inverse Gaussian prior

Abstract

In this paper, we derive prediction distribution of future response(s) from the normal distribution assuming a generalized inverse Gaussian (GIG) prior density for the variance. The GIG includes as special cases the inverse Gaussian, the inverted chi-squared and gamma distributions. The results lead to Bessel-type prediction distributions which is in contrast with the Student-t distributions usually obtained using the inverted chi-squared prior density for the variance. Further, the general structure of GIG provides us with new flexible prediction distributions which include as special cases most of the earlier results obtained under normal-inverted chi-squared or vague priors.

Authors

Thabane L; Safiul Haq M

Journal

Statistical Papers, Vol. 40, No. 2, pp. 175–184

Publisher

Springer Nature

Publication Date

January 1, 1999

DOI

10.1007/bf02925516

ISSN

0932-5026

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