The problem of output optimization within a specified input space of neural networks (NNs) with fixed weights is discussed in this paper. The problem is (highly) nonlinear when nonlinear activation functions are used. This global optimization problem is encountered in the reinforcement learning (RL) community. Interval analysis is applied to guarantee that all solutions are found to any degree of accuracy with guaranteed bounds. The major drawbacks of interval analysis, i.e., dependency effect and high-computational load, are both present for the problem of NN output optimization. Taylor models (TMs) are introduced to reduce these drawbacks. They have excellent convergence properties for small intervals. However, the dependency effect still...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
Artificial Neural Network (ANN) is one of the modern computational methods proposed to solve increas...
We propose a neural network approach for global optimization with applications to nonlinear least sq...
The problem of output optimization within a specified input space of neural networks (NNs) with fixe...
Abstract—Interval arithmetic has become a popular tool for general optimization problems such as rob...
This paper presents a nonlinear projection neural network for solving interval quadratic programs su...
Training a multilayer perceptron (MLP) with algorithms employing global search strategies has been a...
Traditional neural networks like multi-layered perceptrons (MLP) use example patterns, i.e., pairs o...
This paper presents a novel dimension of neural networks through the approach of interval systems fo...
An advanced method of training artificial neural networks is presented here which aims to identify t...
The author proposes an extension of particle swarm optimization (PSO) for solving interval-valued op...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
The existing approaches to the discrete-time nonlinear output regulation problem rely on the offline...
Proceedings of the 9th International Work-Conference on Artificial Neural Networks, IWANN 2007, San ...
. In this paper we study how global optimization methods (like genetic algorithms) can be used to tr...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
Artificial Neural Network (ANN) is one of the modern computational methods proposed to solve increas...
We propose a neural network approach for global optimization with applications to nonlinear least sq...
The problem of output optimization within a specified input space of neural networks (NNs) with fixe...
Abstract—Interval arithmetic has become a popular tool for general optimization problems such as rob...
This paper presents a nonlinear projection neural network for solving interval quadratic programs su...
Training a multilayer perceptron (MLP) with algorithms employing global search strategies has been a...
Traditional neural networks like multi-layered perceptrons (MLP) use example patterns, i.e., pairs o...
This paper presents a novel dimension of neural networks through the approach of interval systems fo...
An advanced method of training artificial neural networks is presented here which aims to identify t...
The author proposes an extension of particle swarm optimization (PSO) for solving interval-valued op...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
The existing approaches to the discrete-time nonlinear output regulation problem rely on the offline...
Proceedings of the 9th International Work-Conference on Artificial Neural Networks, IWANN 2007, San ...
. In this paper we study how global optimization methods (like genetic algorithms) can be used to tr...
[[abstract]]This paper proposes a zero-order method of nonlinear optimization using back-propagation...
Artificial Neural Network (ANN) is one of the modern computational methods proposed to solve increas...
We propose a neural network approach for global optimization with applications to nonlinear least sq...