In this paper, nonlinear functions generated by randomly initialized multilayer perceptrons (MLPs) and simultaneous recurrent neural networks (SRNs) and two benchmark functions are learned by MLPs and SRNs. Training SRNs is a challenging task and a new learning algorithm - PSO-QI is introduced. PSO-QI is a standard particle swarm optimization (PSO) algorithm with the addition of a quantum step utilizing the probability density property of a quantum particle. The results from PSO-QI are compared with the standard backpropagation (BP) and PSO algorithms. It is further verified that functions generated by SRNs are harder to learn than those generated by MLPs but PSO-QI provides learning capabilities of these functions by MLPs and SRNs compared...
The use of heuristic algorithms in neural networks training is not a new subject. Several works have...
Abstract. Backpropagation (BP) algorithm is widely used to solve many real world problems by using t...
Abstract. Particle swarm optimization is widely applied for training neural network. Since in many a...
In this paper, nonlinear functions generated by randomly initialized multilayer perceptrons (MLPs) a...
Simultaneous recurrent neural network (SRN) is one of the most powerful neural network architectures...
Approximation of highly nonlinear functions is an important area of computational intelligence. The ...
This paper presents a comparison of two machine learning methods inspired by nano-scale and macro-sc...
Neural Networks (NN) are known to be unversal approximators for any non-linear function. Training al...
Abstract. Recently, Particle Swarm Optimization(PSO) has been widely applied for training neural net...
Particle swarm optimization (PSO) motivated by the social behavior of organisms, is a step up to exi...
This paper proposes a new learning method for process neural networks (PNNs) based on the Gaussian m...
Neural networks are used in a wide number of fields including signal and image processing, modeling ...
Context of the tutorial: the IEEE CIS Summer School on Computational Intelligence and Applications (...
Abstract- Particle swarm optimization (PSO) motivated by the social behavior of organisms, is a step...
Recently, learning of continuous trajectories for the identification and/or control of dynamic syste...
The use of heuristic algorithms in neural networks training is not a new subject. Several works have...
Abstract. Backpropagation (BP) algorithm is widely used to solve many real world problems by using t...
Abstract. Particle swarm optimization is widely applied for training neural network. Since in many a...
In this paper, nonlinear functions generated by randomly initialized multilayer perceptrons (MLPs) a...
Simultaneous recurrent neural network (SRN) is one of the most powerful neural network architectures...
Approximation of highly nonlinear functions is an important area of computational intelligence. The ...
This paper presents a comparison of two machine learning methods inspired by nano-scale and macro-sc...
Neural Networks (NN) are known to be unversal approximators for any non-linear function. Training al...
Abstract. Recently, Particle Swarm Optimization(PSO) has been widely applied for training neural net...
Particle swarm optimization (PSO) motivated by the social behavior of organisms, is a step up to exi...
This paper proposes a new learning method for process neural networks (PNNs) based on the Gaussian m...
Neural networks are used in a wide number of fields including signal and image processing, modeling ...
Context of the tutorial: the IEEE CIS Summer School on Computational Intelligence and Applications (...
Abstract- Particle swarm optimization (PSO) motivated by the social behavior of organisms, is a step...
Recently, learning of continuous trajectories for the identification and/or control of dynamic syste...
The use of heuristic algorithms in neural networks training is not a new subject. Several works have...
Abstract. Backpropagation (BP) algorithm is widely used to solve many real world problems by using t...
Abstract. Particle swarm optimization is widely applied for training neural network. Since in many a...