Associative memories have emerged as a powerful computational neural network model for several pattern classification problems. Like most traditional classifiers, these models assume that the classes share similar prior probabilities. However, in many real-life applications the ratios of prior probabilities between classes are extremely skewed. Although the literature has provided numerous studies that examine the performance degradation of renowned classifiers on different imbalanced scenarios, so far this effect has not been supported by a thorough empirical study in the context of associative memories. In this paper, we fix our attention on the applicability of the associative neural networks to the classification of imbalanced data. The...
An associative memory is a framework of content-addressable memory that stores a collection of messa...
The high capacity associative memory model is interesting due to its significantly higher capacity w...
This project consists in three main tasks: first, an analysis of the current state of the art in tec...
Associative memories have emerged as a powerful computational neural network model for several patte...
Research carried out by the scientific community has shown that the performance of the classifiers d...
En diversos problemas de reconocimiento de patrones, se ha observado que el desequilibrio de clases ...
Three variants of the Hopfield network are examined, each of which is trained using a different iter...
En diversos problemas de reconocimiento de patrones, se ha observado que el desequilibrio de clases ...
The high capacity associative memory model is interesting due to its significantly higher capacity w...
During the process of knowledge discovery in data, imbalanced learning data often emerges and presen...
The focus of this work are asociative memories as one type of neural networks. We compare models of ...
Abstract. The performance characteristics of five variants of the Hopfield network are examined. Two...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Machine learning models may not be able to effectively learn and predict from imbalanced data in the...
Imbalanced data is a major problem in machine learning classification, since predictive performance ...
An associative memory is a framework of content-addressable memory that stores a collection of messa...
The high capacity associative memory model is interesting due to its significantly higher capacity w...
This project consists in three main tasks: first, an analysis of the current state of the art in tec...
Associative memories have emerged as a powerful computational neural network model for several patte...
Research carried out by the scientific community has shown that the performance of the classifiers d...
En diversos problemas de reconocimiento de patrones, se ha observado que el desequilibrio de clases ...
Three variants of the Hopfield network are examined, each of which is trained using a different iter...
En diversos problemas de reconocimiento de patrones, se ha observado que el desequilibrio de clases ...
The high capacity associative memory model is interesting due to its significantly higher capacity w...
During the process of knowledge discovery in data, imbalanced learning data often emerges and presen...
The focus of this work are asociative memories as one type of neural networks. We compare models of ...
Abstract. The performance characteristics of five variants of the Hopfield network are examined. Two...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Machine learning models may not be able to effectively learn and predict from imbalanced data in the...
Imbalanced data is a major problem in machine learning classification, since predictive performance ...
An associative memory is a framework of content-addressable memory that stores a collection of messa...
The high capacity associative memory model is interesting due to its significantly higher capacity w...
This project consists in three main tasks: first, an analysis of the current state of the art in tec...