We describe a new package for minimizing an unconstrained nonlinear function where the Hessian is large and sparse. The software allows the user to select between a tensor method and a standard method based upon a quadratic model. The tensor method models the objective function by a fourth-order model, where the third- and fourth-order terms are chosen such that the extra cost of forming and solving the model is small. The new contribution of this package consists of the incorporation of an entirely new way of minimizing the tensor model that makes it suitable for solving large, sparse optimization problems efficiently. The test results indicate that, in general, the tensor method is significantly more efficient and more reliable than the s...
The solution of a nonlinear optimization problem often requires an estimate of the Hessian matrix f...
Our work under this support broadly falls into five categories: automatic differentiation, sparsity,...
Abstract. Tensor factorizations with nonnegative constraints have found application in ana-lyzing da...
We describe a new package for minimizing an unconstrained nonlinear function, where the Hessian is l...
We describe a new package for minimizing an unconstrained nonlinear function where the Hessian is la...
This paper describes a software package for solving the unconstrained optimization problem given f :...
Tensor methods for unconstrained optimization were first introduced by Schnabel and Chow [SIAM J. Op...
Tensor methods for unconstrained optimization were first introduced in Schnabel and Chow [SIAM Journ...
Abstract. Tensor methods for unconstrained optimization were rst introduced by Schn-abel and Chow [S...
This paper describes a modular software package for solving systems of nonlinear equa-tions and nonl...
. This paper introduces tensor methods for solving large sparse systems of nonlinear equations. Tens...
This paper describes a modular software package for solving systems of nonlinear equations and nonli...
In this paper, we propose some improvements on a new gradient-type method for solving large-scale un...
In this paper, we describe tensor methods for large sparse systems of nonlinear equations based on K...
AbstractIn this paper, we propose some improvements on a new gradient-type method for solving large-...
The solution of a nonlinear optimization problem often requires an estimate of the Hessian matrix f...
Our work under this support broadly falls into five categories: automatic differentiation, sparsity,...
Abstract. Tensor factorizations with nonnegative constraints have found application in ana-lyzing da...
We describe a new package for minimizing an unconstrained nonlinear function, where the Hessian is l...
We describe a new package for minimizing an unconstrained nonlinear function where the Hessian is la...
This paper describes a software package for solving the unconstrained optimization problem given f :...
Tensor methods for unconstrained optimization were first introduced by Schnabel and Chow [SIAM J. Op...
Tensor methods for unconstrained optimization were first introduced in Schnabel and Chow [SIAM Journ...
Abstract. Tensor methods for unconstrained optimization were rst introduced by Schn-abel and Chow [S...
This paper describes a modular software package for solving systems of nonlinear equa-tions and nonl...
. This paper introduces tensor methods for solving large sparse systems of nonlinear equations. Tens...
This paper describes a modular software package for solving systems of nonlinear equations and nonli...
In this paper, we propose some improvements on a new gradient-type method for solving large-scale un...
In this paper, we describe tensor methods for large sparse systems of nonlinear equations based on K...
AbstractIn this paper, we propose some improvements on a new gradient-type method for solving large-...
The solution of a nonlinear optimization problem often requires an estimate of the Hessian matrix f...
Our work under this support broadly falls into five categories: automatic differentiation, sparsity,...
Abstract. Tensor factorizations with nonnegative constraints have found application in ana-lyzing da...