Abstract
Consider a minimization problem of a convex quadratic function of several variables over a set of inequality constraints of the same type of function. The duel program is a maximization problem with a concave objective function and a set of constrains that are essentially linear. However, the objective function is not differentiable over the constraint region.
In this paper, we study a general theory of dual perturbations and derive a fundamental relationship between a perturbed dual program and the original problem. Based on this relationship, we establish a perturbation theory to display that a well-controlled perturbation on the dual program can overcome the nondifferentiability issue and generate an ε-optimal dual solution for an arbitrarily small number ε. A simple linear program is then constructed to make an easy conversion from the dual solution to a corresponding ε-optimal primal solution. Moreover, a numerical example is included to illustrate the potential of this controlled perturbation scheme.
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References
F. Cole, J.G. Ecker and W. Gochet, “A reduced gradient method for quadratic programming with quadratic constraints andl p -approximation problems,”European Journal of Operations Research 9 (1982) 194–203.
J.G. Ecker and R.D. Niemi, “A dual method for quadratic programs with quadratic constraints,”SIAM Journal of Applied Mathematics 28 (1975) 568–576.
E.L. Peterson and J.G. Ecker, “Geometric programming duality in quadratic programming andl p -approximations I,” in: H.W. Kuhn and A.W. Tucker, eds.,Proceedings of the International Symposium on Mathematical Programming (Princeton University Press, Princeton New Jersey, 1970) pp. 445–480.
E.L. Peterson and J.G. Ecker, “Geometric programming duality in quadratic programming andl p -approximations II: Canonical programs”,SIAM Journal of Applied Mathematics 17 (1969) 317–340.
E.L. Peterson and J.G. Ecker, “Geometric programming duality in quadratic programming andl p -approximations III: degenerate programs,”Journal of Mathematical Analysis and Applications 29 (1970) 317–340.
E.L. Peterson and J.R. Rajasekera, “New perturbational proof of the main duality theorem of geometric programming and a computational procedure based on this proof II: quadratic programming andl p -approximations,” Draft for Technical Report, Program of Operations Research, North Carolina State University, (Raleigh, NC, 1984).
E. Phan-huy-Hao, “Quadratically constrained quadratic programming: some applications and a method for solution,”Zeitschrift für Operations Research 26 (1982) 105–119.
J.R. Rajasekera, “Perturbational techniques for the solution of posynomial, quadratic, andl p -approximation programs,” Ph. D. Thesis North Carolina State University (Raleigh, NC, 1984).
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Fang, S.C., Rajasekera, J.R. Controlled perturbations for quadratically constrained quadratic programs. Mathematical Programming 36, 276–289 (1986). https://doi.org/10.1007/BF02592062
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DOI: https://doi.org/10.1007/BF02592062