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ICML
1995
IEEE

Learning to Make Rent-to-Buy Decisions with Systems Applications

14 years 5 months ago
Learning to Make Rent-to-Buy Decisions with Systems Applications
In the single rent-to-buy decision problem, without a priori knowledge of the amount of time a resource will be used we need to decide when to buy the resource, given that we can rent the resource for $1 per unit time or buy it once and for all for $c. In this paper we study algorithms that make a sequence of single rent-to-buy decisions, using the assumption that the resource use times are independently drawn from an unknown probability distribution. Our study of this rent-to-buy problem is motivated by important systems applications described in the paper. We develop a provably optimal and computationally e cient algorithm for our formulation of the rent-to-buy problem. Our algorithm uses O( p t) time and space, and its expected cost for the tth resource use converges to optimal as O( p logt=t), for any bounded probability distribution on the resource use times. Alternatively, using O(1) time and space, the algorithm almost converges to optimal. We describe the experimental results ...
P. Krishnan, Philip M. Long, Jeffrey Scott Vitter
Added 17 Nov 2009
Updated 17 Nov 2009
Type Conference
Year 1995
Where ICML
Authors P. Krishnan, Philip M. Long, Jeffrey Scott Vitter
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