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Superlinearly convergent affine scaling interior trust-region method for linear constrained LC1 minimization
Authors:De Tong Zhu
Affiliation:(1) Business College, Shanghai Normal University, Shanghai, 200234, P. R. China
Abstract:We extend the classical affine scaling interior trust region algorithm for the linear constrained smooth minimization problem to the nonsmooth case where the gradient of objective function is only locally Lipschitzian. We propose and analyze a new affine scaling trust-region method in association with nonmonotonic interior backtracking line search technique for solving the linear constrained LC1 optimization where the second-order derivative of the objective function is explicitly required to be locally Lipschitzian. The general trust region subproblem in the proposed algorithm is defined by minimizing an augmented affine scaling quadratic model which requires both first and second order information of the objective function subject only to an affine scaling ellipsoidal constraint in a null subspace of the augmented equality constraints. The global convergence and fast local convergence rate of the proposed algorithm are established under some reasonable conditions where twice smoothness of the objective function is not required. Applications of the algorithm to some nonsmooth optimization problems are discussed. The author gratefully acknowledges the partial supports of the National Science Foundation Grant (10871130) of China, the Ph.D. Foundation Grant (0527003), the Shanghai Leading Academic Discipline Project (T0401), and the Science Foundation Grant (05DZ11) of Shanghai Education Committee
Keywords:trust region method  backtracking  nonmonotonic technique  interior point  LC1 minimization  affine scaling
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