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We propose a new algorithm, a reflective Newton method, for the minimization of a quadratic function of many variables subject to upper arid lower bounds on some of the variables. The method applies to a general (indefinite) quadratic function for which a local minimizes subject to bounds is required and is particularly suitable for the large-scale problem. Our new method exhibits strong convergence properties and global and second-order convergence and appears to have significant practical potential. Strictly feasible points are generated. We provide experimental results on moderately large and sparse problems based on both sparse Cholesky and preconditioned conjugate gradient linear solvers.
Coleman et al. (Fri,) studied this question.
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