On Bayesian models in stochastic scheduling
Keyword(s):
The D.A.I. theorem of Gittins and Jones has proved a powerful tool in solving sequential statistical problems. A generalisation of this theorem is presented. This generalisation enables us to solve certain stochastic scheduling problems where the items or jobs to be scheduled have random times to completion, the random times having distributions dependent upon parameters to which prior distributions are allocated. Such problems are of interest in many areas where scheduling is important.
1977 ◽
Vol 14
(03)
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pp. 556-565
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1983 ◽
Vol 12
(4)
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pp. 406
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1994 ◽
Vol 40
(1)
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pp. 75-89
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1987 ◽
Vol 34
(3)
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pp. 319-335
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1991 ◽
Vol 23
(01)
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pp. 86-104
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2006 ◽
Vol 38
(3)
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pp. 643-672
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