We propose a neural network approach for global optimization with applications to nonlinear least square problems. A state space search algorithm is introduced to perform global optimization procedures to solve the nonlinear problem. The center idea is defined by the algorithm that is developed from neural network learning. The convergence analysis shows that the convergence of the algorithm to the desired solution is guaranteed. Our examples show that the method is effective and accurate. The simplicity of this new approach, especially with the algorithm given in this paper, would provide a good alternative in addition to statistics methods for power regression models with large data
This paper presents an efficient approach based on recurrent neural network for solving nonlinear op...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
We propose a neural network approach for global optimization with applications to nonlinear least sq...
In this thesis we present new methods for solving nonlinear optimization problems These problems a...
The ultimate goal of this work is to provide a general global optimization method. Due to the diffic...
288 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1997.We show experimental results ...
... these new methods, we develop a prototype, called Novel (Nonlinear Optimization Via External Lea...
The paper presents an overview of global issues in optimization methods for Supervised Learning (SL...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
Artificial Neural Networks have earned popularity in recent years because of their ability to approx...
The paper presents an overview of global issues in optimizationmethods for training feedforward neu...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
Training a neural network is a difficult optimization problem because of numerous local minimums. M...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
This paper presents an efficient approach based on recurrent neural network for solving nonlinear op...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
We propose a neural network approach for global optimization with applications to nonlinear least sq...
In this thesis we present new methods for solving nonlinear optimization problems These problems a...
The ultimate goal of this work is to provide a general global optimization method. Due to the diffic...
288 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1997.We show experimental results ...
... these new methods, we develop a prototype, called Novel (Nonlinear Optimization Via External Lea...
The paper presents an overview of global issues in optimization methods for Supervised Learning (SL...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
Artificial Neural Networks have earned popularity in recent years because of their ability to approx...
The paper presents an overview of global issues in optimizationmethods for training feedforward neu...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
Training a neural network is a difficult optimization problem because of numerous local minimums. M...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
This paper presents an efficient approach based on recurrent neural network for solving nonlinear op...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...