An Algorithm for the Minimum-Risk Problem of Stochastic Programming

Published Online:https://doi.org/10.1287/opre.20.1.154

This paper presents a computational procedure for the solution—via reduction to a parametric quadratic program—of the “minimum-risk problem” associated with a stochastic linear program where costs are random variables with normal multidimensional joint distribution, i.e., for the nonlinear program maxxϵX(cxt)/(xVx)1/2 in where t is a given number, V a positive-definite matrix, and X a given convex polyhedron in n-dimensional Euclidean space Rn.

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