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- 2011 Annual Meeting
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- Advances In Optimization I
- (135d) Convergence Rate of Convex Relaxations
In this talk, first the notion of convergence order is extended from interval extensions to convex relaxations in the pointwise metric and Hausdorff metric. The main part of the talk develops theory for the well-known McCormick relaxations of factorable functions [1]. Convergence rules are established for the addition, multiplication and composition operations. The convergence order of the composite function depends on the convergence order of the relaxations of the factors. No improvement in the order of convergence compared to that of the underlying bound calculation, e.g., via interval extensions, can be guaranteed unless the relaxations of the factors have pointwise convergence of high order. Additionally, the McCormick relaxations are compared with the alphaBB relaxations by Floudas and coworkers [2], which guarantee quadratic pointwise convergence. Illustrative and numerical examples are given and hybrid methods are discussed. The implication of the results are discussed for practical bound calculations as well as for convex/concave relaxations of factors commonly found in process systems engineering models.
[1] G. P. McCormick. Computability of global solutions to factorable nonconvex programs: Part I. Convex underestimating problems. Mathematical Programming, 10(2):147--175, 1976.
[2] I. P. Androulakis, C. D. Maranas and C. A. Floudas. alphaBB: A Global Optimization Method for General Constrained Nonconvex Problems, Journal of Global Optimization, 7(4): 337-363, 1995.
[3] M. Tawarmalani and N. V. Sahinidis. Convexification and Global Optimization in
Continuous and Mixed-Integer Nonlinear Programming. Nonconvex Optimization and its
Applications. Kluwer Academic Publishers, Boston, 2002
[4] R. Moore. Methods and Applications of Interval Analysis. SIAM, Philadelphia, PA, 1979