The classical connectionist models are not well suited to working with data varying over time. According to this, temporal connectionist models have emerged and constitute a continuously growing research field. In this paper we present a novel supervised recurrent neural network architecture (SARASOM) based on the Associative Self-Organizing Map (A-SOM). The A-SOM is a variant of the Self-Organizing Map (SOM) that develops a representation of its input space as well as learns to associate its activity with an arbitrary number of additional inputs. In this context the A-SOM learns to associate its previous activity with a delay of one iteration. The performance of the SARASOM was evaluated and compared with the Elman network in a number of p...
Statistical data analysis is applied in many fields in order to gain understanding to the complex be...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
Self-organizing maps (SOMs) have become popular for tasks in data visualization, pattern classificat...
We present and evaluate a novel supervised recurrent neural network architecture, the SARASOM, based...
As potential candidates for explaining human cognition, connectionist models of sentence processing ...
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
A big challenge of reservoir-based Recurrent Neural Networks (RNNs) is the optimization of the conne...
Abstract. We present a novel approach to unsupervised temporal sequence processing in the form of an...
This paper presents a new growing neural network for sequence clustering and classification. This ne...
Sequence processing involves several tasks such as clustering, classification, prediction, and trans...
We generalize a class of neural network models that extend the Kohonen Self-Organising Map (SOM) alg...
International audienceLearning the structure of event sequences is a ubiquitous problem in cognition...
International audienceThis paper presents a multi-map joint self-organizing architecture able to rep...
International audienceSpatio-temporal connectionist networks comprise an important class of neural m...
We present a study of a novel variant of the Self-Organizing Map (SOM) called the Associative Self-O...
Statistical data analysis is applied in many fields in order to gain understanding to the complex be...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
Self-organizing maps (SOMs) have become popular for tasks in data visualization, pattern classificat...
We present and evaluate a novel supervised recurrent neural network architecture, the SARASOM, based...
As potential candidates for explaining human cognition, connectionist models of sentence processing ...
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
A big challenge of reservoir-based Recurrent Neural Networks (RNNs) is the optimization of the conne...
Abstract. We present a novel approach to unsupervised temporal sequence processing in the form of an...
This paper presents a new growing neural network for sequence clustering and classification. This ne...
Sequence processing involves several tasks such as clustering, classification, prediction, and trans...
We generalize a class of neural network models that extend the Kohonen Self-Organising Map (SOM) alg...
International audienceLearning the structure of event sequences is a ubiquitous problem in cognition...
International audienceThis paper presents a multi-map joint self-organizing architecture able to rep...
International audienceSpatio-temporal connectionist networks comprise an important class of neural m...
We present a study of a novel variant of the Self-Organizing Map (SOM) called the Associative Self-O...
Statistical data analysis is applied in many fields in order to gain understanding to the complex be...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
Self-organizing maps (SOMs) have become popular for tasks in data visualization, pattern classificat...