The recursive deterministic perceptron (RDP) is a generalization of the single layer perceptron neural network. This neural network can separate, in a deterministic manner, any classification problem (linearly separable or not). It relies on the principle that in any nonlinearly separable (NLS) two-class classification problem, a linearly separable (LS) subset of one or more points belonging to one of the two classes can always be found. Small network topologies can be obtained when the LS subsets are of maximum cardinality. This is referred to as the problem of maximum separability and has been proven to be NP-Complete. Evolutionary computing techniques are applied to handle this problem in a more efficient way than the standard approaches...
Deep Learning networks are a new type of neural network that discovers important object features. Th...
AbstractWe consider neural nets whose connections are defined by growth rules taking the form of rec...
Abstract. This paper proposes a new paradigm, referred to as Recur-rent Genetic Algorithms (RGA), to...
The Recursive Deterministic Perceptron is a generalisation of the single layer perceptron neural net...
The Recursive Deterministic Perceptron (RDP) feed-forward multilayer neural network is a generalisat...
feed-forward multilayer neural network is a generalisation of the single layer perceptron topology. ...
AbstractThe Recursive Deterministic Perceptron (RDP) feedforward multilayer neural network is a gene...
This paper introduces a comparison study of three existing methods for building Recursive Determinis...
The Recursive Deterministic Perceptron (RDP) feed-forward multilayer neural network is a generalisat...
This article presents an analysis of some of the methods for testing linear separability. A single l...
This paper introduces latest advances in the subject of linear separability. New methods for testing...
Constructive induction, which is defined to be the process of constructing new and useful features f...
In this paper, we propose a genetic algorithm for the training and construction of a multilayer perc...
This paper introduces a fully recursive perceptron network (FRPN) architecture as a possible replace...
Recursive branching network (RBN) was proposed in [1] to solve linearly non-separable problems using...
Deep Learning networks are a new type of neural network that discovers important object features. Th...
AbstractWe consider neural nets whose connections are defined by growth rules taking the form of rec...
Abstract. This paper proposes a new paradigm, referred to as Recur-rent Genetic Algorithms (RGA), to...
The Recursive Deterministic Perceptron is a generalisation of the single layer perceptron neural net...
The Recursive Deterministic Perceptron (RDP) feed-forward multilayer neural network is a generalisat...
feed-forward multilayer neural network is a generalisation of the single layer perceptron topology. ...
AbstractThe Recursive Deterministic Perceptron (RDP) feedforward multilayer neural network is a gene...
This paper introduces a comparison study of three existing methods for building Recursive Determinis...
The Recursive Deterministic Perceptron (RDP) feed-forward multilayer neural network is a generalisat...
This article presents an analysis of some of the methods for testing linear separability. A single l...
This paper introduces latest advances in the subject of linear separability. New methods for testing...
Constructive induction, which is defined to be the process of constructing new and useful features f...
In this paper, we propose a genetic algorithm for the training and construction of a multilayer perc...
This paper introduces a fully recursive perceptron network (FRPN) architecture as a possible replace...
Recursive branching network (RBN) was proposed in [1] to solve linearly non-separable problems using...
Deep Learning networks are a new type of neural network that discovers important object features. Th...
AbstractWe consider neural nets whose connections are defined by growth rules taking the form of rec...
Abstract. This paper proposes a new paradigm, referred to as Recur-rent Genetic Algorithms (RGA), to...