Advances in Applied Probability, 33, 1, pp. 76-98, 2001
Abstract
We show that if performance measures in a stochastic scheduling problem
satisfy a set of so-called partial conservation laws (PCL), which
extend previously studied generalized conservation laws (GCL), then the
problem is solved optimally by a priority-index policy for an
appropriate range of linear performance objectives, where the optimal
indices are computed by a one-pass adaptive-greedy algorithm, based
on Klimov's. We further apply this framework to investigate the
indexability property of restless bandits introduced by Whittle,
obtaining the following results: (1) we identify a class of restless
bandits (PCL-indexable) which are indexable; membership in this class
is tested through a single run of the adaptive-greedy algorithm,
which also computes the Whittle indices when the test is positive;
this provides a tractable sufficient condition for indexability;
(2) we further indentify the class of GCL-indexable bandits, which
includes classical bandits, having the property that they are
indexable under any linear reward objective. The analysis is based
on the so-called achievable region method, as the results follow from
new linear programming formulations for the problems investigated.
Other authors
Universitat Pompeu Fabra. Departament d'Economia i Empresa