Inspired by chaotic firing of neurons in the brain, we propose ChaosNet—a novel chaos based artificial neural network architecture for classification tasks. ChaosNet is built using layers of neurons, each of which is a 1D chaotic map known as the Generalized Luröth Series (GLS) that has been shown in earlier works to possess very useful properties for compression, cryptography, and for computing XOR and other logical operations. In this work, we design a novel learning algorithm on ChaosNet that exploits the topological transitivity property of the chaotic GLS neurons. The proposed learning algorithm gives consistently good performance accuracy in a number of classification tasks on well known publicly available datasets with very limited t...
The pioneering contribution of this paper is to design and implement a Neural Network (NN) that demo...
AbstractIt is proposed that chaotic attractors incorporated in neural net models can represent class...
A new architecture and methods for information storage in neural networks are presented. Behaving as...
© 2020 The Author(s). Published by IOP Publishing Ltd. We train an artificial neural network which d...
Over the last few years, the field of Chaotic Neural Networks (CNNs) has been extensively studied be...
The literature on chaos theory reports numerous Neural Networks (NNs) in which the individual neuron...
Chaotic systems are sensitive to initial conditions, system parameters and topological transitivity ...
International audienceChaotic neural networks have received a great deal of attention these last yea...
This paper proposes a new dynamical memory system based on chaotic neural networks, and its learning...
Abstract—Chaotic neural networks have received a great deal of attention these last years. In this p...
Pattern recognition (PR) is the study of how a system can observe the environment, learn to distingu...
Chaos and fractals are novel fields of physics and mathematics showing up a new way of universe view...
International audienceMany research works deal with chaotic neural networks for various fields of ap...
Summary. Traditional Pattern Recognition (PR) systems work with the model that the object to be reco...
Pattern recognition is one of the most difficult problems and somehow impossible to be solved by con...
The pioneering contribution of this paper is to design and implement a Neural Network (NN) that demo...
AbstractIt is proposed that chaotic attractors incorporated in neural net models can represent class...
A new architecture and methods for information storage in neural networks are presented. Behaving as...
© 2020 The Author(s). Published by IOP Publishing Ltd. We train an artificial neural network which d...
Over the last few years, the field of Chaotic Neural Networks (CNNs) has been extensively studied be...
The literature on chaos theory reports numerous Neural Networks (NNs) in which the individual neuron...
Chaotic systems are sensitive to initial conditions, system parameters and topological transitivity ...
International audienceChaotic neural networks have received a great deal of attention these last yea...
This paper proposes a new dynamical memory system based on chaotic neural networks, and its learning...
Abstract—Chaotic neural networks have received a great deal of attention these last years. In this p...
Pattern recognition (PR) is the study of how a system can observe the environment, learn to distingu...
Chaos and fractals are novel fields of physics and mathematics showing up a new way of universe view...
International audienceMany research works deal with chaotic neural networks for various fields of ap...
Summary. Traditional Pattern Recognition (PR) systems work with the model that the object to be reco...
Pattern recognition is one of the most difficult problems and somehow impossible to be solved by con...
The pioneering contribution of this paper is to design and implement a Neural Network (NN) that demo...
AbstractIt is proposed that chaotic attractors incorporated in neural net models can represent class...
A new architecture and methods for information storage in neural networks are presented. Behaving as...