The problem of spurious patterns in neural associative memory models is discussed. Some suggestions to solve this problem from the literature are reviewed and their inadequacies are pointed out. A solution based on the notion of neural self-interaction with a suitably chosen magnitude is presented for the Hebbian learning rule. For an optimal learning rule based on linear programming, asymmetric dilution of synaptic connections is presented as another solution to the problem of spurious patterns. With varying percentages of asymmetric dilution it is demonstrated numerically that this optimal learning rule leads to near total suppression of spurious patterns. For practical usage of neural associative memory networks a combination of the two ...
Abstract:- Among a lot of models for learning in neural networks, Hebbian and anti-Hebbian learnings...
This paper concerns the learning of associative memory networks. We derive inequality associative co...
We discuss the problem of segmentation in pattern recognition. We adopt the model and the general ap...
The problem of spurious patterns in neural associative memory models is discussed, Some suggestions ...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
We have studied the effect of various kinds of damaging that may occur in a neural network whose syn...
Neural network models of associative memory exhibit a large number of spurious attractors of the net...
In this paper, an optimized training scheme of neural network for associative memory was proposed. I...
International audienceIt is possible to construct diluted asymmetric models of neural networks for w...
The standard Hopfield model for associative neural networks accounts for biological Hebbian learning...
Associative matrix memories with real-valued synapses have been studied in many incarnations. We con...
A neural model for the recovery of learnt patterns is presented. The model simulates the theta-gamma...
This paper proposes a novel neural network model for associative memory using dynamical systems. The...
Abstract The consequences of two techniques for symmetrically diluting the weights of the standard H...
Learning in a neuronal network is often thought of as a linear superposition of synaptic modificatio...
Abstract:- Among a lot of models for learning in neural networks, Hebbian and anti-Hebbian learnings...
This paper concerns the learning of associative memory networks. We derive inequality associative co...
We discuss the problem of segmentation in pattern recognition. We adopt the model and the general ap...
The problem of spurious patterns in neural associative memory models is discussed, Some suggestions ...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
We have studied the effect of various kinds of damaging that may occur in a neural network whose syn...
Neural network models of associative memory exhibit a large number of spurious attractors of the net...
In this paper, an optimized training scheme of neural network for associative memory was proposed. I...
International audienceIt is possible to construct diluted asymmetric models of neural networks for w...
The standard Hopfield model for associative neural networks accounts for biological Hebbian learning...
Associative matrix memories with real-valued synapses have been studied in many incarnations. We con...
A neural model for the recovery of learnt patterns is presented. The model simulates the theta-gamma...
This paper proposes a novel neural network model for associative memory using dynamical systems. The...
Abstract The consequences of two techniques for symmetrically diluting the weights of the standard H...
Learning in a neuronal network is often thought of as a linear superposition of synaptic modificatio...
Abstract:- Among a lot of models for learning in neural networks, Hebbian and anti-Hebbian learnings...
This paper concerns the learning of associative memory networks. We derive inequality associative co...
We discuss the problem of segmentation in pattern recognition. We adopt the model and the general ap...