A Class of Globally Convergent Optimization Methods Based on Conservative Convex Separable Approximations
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Abstract
This paper deals with a certain class of optimization methods, based on conservative convex separable approximations (CCSA), for solving inequality-constrained nonlinear programming problems. Each generated iteration point is a feasible solution with lower objective value than the previous one, and it is proved that the sequence of iteration points converges toward the set of Karush--Kuhn--Tucker points. A major advantage of CCSA methods is that they can be applied to problems with a very large number of variables (say 104--105) even if the Hessian matrices of the objective and constraint functions are dense.
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Topics
Keywords
- Mathematics
- Hessian matrix
- Class (philosophy)
- Nonlinear programming
- Separable space
- Sequence (biology)
- Mathematical optimization
- Interior point method
UN Sustainable Development Goals
- Reduced inequalities
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