A scenario generation‐based lower bounding approach for stochastic scheduling problems

A scenario generation‐based lower bounding approach for stochastic scheduling problems

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Article ID: iaor20125252
Volume: 63
Issue: 10
Start Page Number: 1410
End Page Number: 1420
Publication Date: Oct 2012
Journal: Journal of the Operational Research Society
Authors: , ,
Keywords: combinatorial optimization
Abstract:

In this paper, we investigate scenario generation methods to establish lower bounds on the optimal objective value for stochastic scheduling problems that contain random parameters with continuous distributions. In contrast to the Sample Average Approximation (SAA) approach, which yields probabilistic bound values, we use an alternative bounding method that relies on the ideas of discrete bounding and recursive stratified sampling. Theoretical support is provided for deriving exact lower bounds for both expectation and conditional value‐at‐risk objectives. We illustrate the use of our method on the single machine total weighted tardiness problem. The results of our numerical investigation demonstrate good properties of our bounding method, compared with the SAA method and an earlier discrete bounding method.

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