Title of article :
On the Distribution of the Inverted Linear Compound of Dependent F-Variates and its Application to the Combination of Forecasts
Author/Authors :
Kuo-Yuan Liang، نويسنده , , Jack C. Lee & Kurt S.H. Shao، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
This paper establishes a sampling theory for an inverted linear combination of two
dependent F-variates. It is found that the random variable is approximately expressible in terms
of a mixture of weighted beta distributions. Operational results, including rth-order raw moments
and critical values of the density are subsequently obtained by using the Pearson Type I
approximation technique. As a contribution to the probability theory, our findings extend Lee &
Hu’s (1996) recent investigation on the distribution of the linear compound of two independent
F-variates. In terms of relevant applied works, our results refine Dickinson’s (1973) inquiry on
the distribution of the optimal combining weights estimates based on combining two independent
rival forecasts, and provide a further advancement to the general case of combining three
independent competing forecasts. Accordingly, our conclusions give a new perception of
constructing the confidence intervals for the optimal combining weights estimates studied in the
literature of the linear combination of forecasts.
Keywords :
Combining weights , invertedF-variates , error-variance minimizing criterion , Pearson Type I approximation , Critical values
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS