Abstract-This paper addresses recurrent neural architectures based on coupled bifurcating nodes that exhibit chaotic dynamics. The nodes are composed of logistic recursive maps, which interact through parametric coupling, i.e., through dynamic modulation of the bifurcation parameters. These networks are used to implement associative memories in which the coding of binary strings is done through spatio-temporal attractors with period-2 cycles. The associative performance of such arrangements is measured under several levels of analog noise in the prompting pattern (initial conditions of the coupled recursions). The phenomena of unbalanced power of attractors is detected. The paper also identifies and analyzes the issue of fragmented (non-con...
This paper proposes a new dynamical memory system based on chaotic neural networks, and its learning...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
<div><p>We study the properties of the dynamical phase transition occurring in neural network models...
This dissertation addresses the study of neural networks in which the processing elements are mathem...
Recurrent neural network models with parallel distributed architecture are constructed using ordinar...
Associative memory dynamics in neural networks are generally based on attractors. Retrieval based on...
Among many newly raised issues in neuroscience, we have been particularly interested in three issues...
this paper is contained in the projection theorem, which details the associative memory capabilitie...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
The literature on chaos theory reports numerous Neural Networks (NNs) in which the individual neuron...
金沢大学理工研究域電子情報学系A model of dynamic associative memories is proposed in this paper. The aim is to find...
We study a model of associative memory based on a neural network with small-world structure. The eff...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
Over the last few years, the field of Chaotic Neural Networks (CNNs) has been extensively studied be...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
This paper proposes a new dynamical memory system based on chaotic neural networks, and its learning...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
<div><p>We study the properties of the dynamical phase transition occurring in neural network models...
This dissertation addresses the study of neural networks in which the processing elements are mathem...
Recurrent neural network models with parallel distributed architecture are constructed using ordinar...
Associative memory dynamics in neural networks are generally based on attractors. Retrieval based on...
Among many newly raised issues in neuroscience, we have been particularly interested in three issues...
this paper is contained in the projection theorem, which details the associative memory capabilitie...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
The literature on chaos theory reports numerous Neural Networks (NNs) in which the individual neuron...
金沢大学理工研究域電子情報学系A model of dynamic associative memories is proposed in this paper. The aim is to find...
We study a model of associative memory based on a neural network with small-world structure. The eff...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
Over the last few years, the field of Chaotic Neural Networks (CNNs) has been extensively studied be...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
This paper proposes a new dynamical memory system based on chaotic neural networks, and its learning...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
<div><p>We study the properties of the dynamical phase transition occurring in neural network models...