We present a framework for the self-organized formation of high level learning by a statistical preprocessing of features. The paper focuses first on the formation of the features in the context of layers of feature processing units as a kind of resource-restricted associative multiresolution learning We clame that such an architecture must reach maturity by basic statistical proportions, optimizing the information processing capabilities of each layer. The final symbolic output is learned by pure association of features of different levels and kind of sensorial input. Finally, we also show that common error-correction learning for motor skills can be accomplished also by non-specific associative learning. Keywords: feedforward network laye...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
At a first glance, artificial neural networks, with engineered learning algorithms and carefully cho...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...
We present a framework for the self-organized formation of high level learning by a statistical prep...
We study learning and generalisation ability of a specific two-layer feed-forward neural network and...
Artificial intelligence and learning is a growing field. There are many ways of making a computer pr...
The success of many tasks depends on good feature representation which is often domain-specific and ...
Abstract. In this paper we introduce feedback based associative learning in self-organized learning ...
The paper analyses possibilities of episodic multi-winner multi-directional associative memory taugh...
A neural network architecture for the learning of recognition categories is derived. Real-time netwo...
The statistical likelihood of Gabor filters and primary visual cortex has been of interest for years...
The high level abstraction is developed layer after layer. This abstraction and generalization are i...
Self-organizing neural networks have been implemented in a wide range of application areas such as s...
This paper proposes a biologically-motivated neural network model of supervised learning. The model ...
This thesis discusses a few interesting topics regarding fundamental aspects of learning in the foll...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
At a first glance, artificial neural networks, with engineered learning algorithms and carefully cho...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...
We present a framework for the self-organized formation of high level learning by a statistical prep...
We study learning and generalisation ability of a specific two-layer feed-forward neural network and...
Artificial intelligence and learning is a growing field. There are many ways of making a computer pr...
The success of many tasks depends on good feature representation which is often domain-specific and ...
Abstract. In this paper we introduce feedback based associative learning in self-organized learning ...
The paper analyses possibilities of episodic multi-winner multi-directional associative memory taugh...
A neural network architecture for the learning of recognition categories is derived. Real-time netwo...
The statistical likelihood of Gabor filters and primary visual cortex has been of interest for years...
The high level abstraction is developed layer after layer. This abstraction and generalization are i...
Self-organizing neural networks have been implemented in a wide range of application areas such as s...
This paper proposes a biologically-motivated neural network model of supervised learning. The model ...
This thesis discusses a few interesting topics regarding fundamental aspects of learning in the foll...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
At a first glance, artificial neural networks, with engineered learning algorithms and carefully cho...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...