A universal binary neuron (UBN) operates with complex-valued weights and a complex-valued activation function, which is the function of the argument of the weighted sum. The activation function of a UBN separates a whole complex plane onto equal sectors, where the activation function is equal to either 1 or-1 depending on the sector parity (even or odd, respectively). Thus, the UBN output is determined by the argument of the weighted sum. This makes possible the implementation of the nonlinearly separable (non-threshold) Boolean functions on a single neuron. Hence, the functionality of UBN is incompatibly higher than the functionality of the traditional perceptron. In this paper, we will consider a new modified learning algorithm for the UB...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
A more plausible biological version of the traditional perceptron is presented here with a learning ...
Abstract. A universal binary neuron (UBN) operates with the complex-valued weights and the complex-v...
Abstract:- Highly nonlinear data sets are important in the field of artificial neural networks. It i...
Starting with two hidden units, we train a simple single hidden layer feed-forward neural network to...
A new algorithm for learning representations in Boolean neural networks, where the inputs and output...
A new type of neural unit is studied.The unit is given as = g(τ),τ=■ with g(.) being Gaussian-like s...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
In this paper, we propose a genetic algorithm for the training and construction of a multilayer perc...
In this paper ordered neural networks for the Nbit parity function containing [log2(N + 1)] threshol...
Abstract: In this paper, a new activation function for the multi-valued neuron (MVN) is presented. T...
An algorithm for the training of a special multilayered feed-forward neural network is presented. Th...
In this paper, the ability of a Binary Neural Network comprising only neurons with zero thresholds a...
This paper deals with the foundation of a Non-linear Threshold Logic as a significative extension of...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
A more plausible biological version of the traditional perceptron is presented here with a learning ...
Abstract. A universal binary neuron (UBN) operates with the complex-valued weights and the complex-v...
Abstract:- Highly nonlinear data sets are important in the field of artificial neural networks. It i...
Starting with two hidden units, we train a simple single hidden layer feed-forward neural network to...
A new algorithm for learning representations in Boolean neural networks, where the inputs and output...
A new type of neural unit is studied.The unit is given as = g(τ),τ=■ with g(.) being Gaussian-like s...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
In this paper, we propose a genetic algorithm for the training and construction of a multilayer perc...
In this paper ordered neural networks for the Nbit parity function containing [log2(N + 1)] threshol...
Abstract: In this paper, a new activation function for the multi-valued neuron (MVN) is presented. T...
An algorithm for the training of a special multilayered feed-forward neural network is presented. Th...
In this paper, the ability of a Binary Neural Network comprising only neurons with zero thresholds a...
This paper deals with the foundation of a Non-linear Threshold Logic as a significative extension of...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
A more plausible biological version of the traditional perceptron is presented here with a learning ...