In our paper, we introduce a sparse and symmetric matrix completion quasi-Newton model using automatic differentiation, for solving unconstrained optimization problems where the sparse structure of the Hessian is available. The proposed method is a kind of matrix completion quasi-Newton method and has some nice properties. Moreover, the presented method keeps the sparsity of the Hessian exactly and satisfies the quasi-Newton equation approximately. Under the usual assumptions, local and superlinear convergence are established. We tested the performance of the method, showing that the new method is effective and superior to matrix completion quasi-Newton updating with the Broyden–Fletcher–Goldfarb–Shanno (BFGS) method and the limited-memory ...
Subspace quasi-Newton (SQN) method has been widely used in large scale unconstrained optimization pr...
Quasi-Newton methods are among the most practical and efficient iterative methods for solving uncons...
In this paper a new class of quasi-Newton methods, named LQN, is introduced in order to solve uncons...
Based on the idea of maximum determinant positive definite matrix completion, Yamashita proposed a s...
Many methods for solving minimization problems are variants of Newton method, which requires the spe...
Abstract: "We propose a quasi-Newton algorithm for solving optimization problems with nonlinear equa...
Arevised algorithm is given for unconstrained optimization using quasi-Newton methods. The method is...
In this paper, we investigate quasi-Newton methods for solving unconstrained optimization problems. ...
Abstract: "We propose a quasi-Newton algorithm for solving large optimization problems with nonlinea...
In this paper a new class of quasi-Newton methods, namedLQN, is introduced in order to solve unconst...
This thesis is concerned with analyzing and improving the performance of quasi-Newton methods for f...
In this paper, we propose a hybrid ODE-based quasi-Newton (QN) method for unconstrained optimization...
Quasi-Newton methods are among the most practical and efficient iterative methods for solving uncons...
This paper develops a modified quasi-Newton method for structured unconstrained optimization with pa...
Quasi-Newton algorithms for unconstrained nonlinear minimization generate a sequence of matrices tha...
Subspace quasi-Newton (SQN) method has been widely used in large scale unconstrained optimization pr...
Quasi-Newton methods are among the most practical and efficient iterative methods for solving uncons...
In this paper a new class of quasi-Newton methods, named LQN, is introduced in order to solve uncons...
Based on the idea of maximum determinant positive definite matrix completion, Yamashita proposed a s...
Many methods for solving minimization problems are variants of Newton method, which requires the spe...
Abstract: "We propose a quasi-Newton algorithm for solving optimization problems with nonlinear equa...
Arevised algorithm is given for unconstrained optimization using quasi-Newton methods. The method is...
In this paper, we investigate quasi-Newton methods for solving unconstrained optimization problems. ...
Abstract: "We propose a quasi-Newton algorithm for solving large optimization problems with nonlinea...
In this paper a new class of quasi-Newton methods, namedLQN, is introduced in order to solve unconst...
This thesis is concerned with analyzing and improving the performance of quasi-Newton methods for f...
In this paper, we propose a hybrid ODE-based quasi-Newton (QN) method for unconstrained optimization...
Quasi-Newton methods are among the most practical and efficient iterative methods for solving uncons...
This paper develops a modified quasi-Newton method for structured unconstrained optimization with pa...
Quasi-Newton algorithms for unconstrained nonlinear minimization generate a sequence of matrices tha...
Subspace quasi-Newton (SQN) method has been widely used in large scale unconstrained optimization pr...
Quasi-Newton methods are among the most practical and efficient iterative methods for solving uncons...
In this paper a new class of quasi-Newton methods, named LQN, is introduced in order to solve uncons...