Many of the studies related to supervised learning have focused on the resolution of multiclass problems. A standard technique used to resolve these problems is to decompose the original multiclass problem into multiple binary problems. In this paper, we propose a new learning model applicable to multi-class domains in which the examples are described by a large number of features. The proposed model is an Artificial Neural Network ensemble in which the base learners are composed by the union of a binary classifier and a multiclass classifier. To analyze the viability and quality of this system, it will be validated in two real domains: traffic sign recognition and hand-written digit recognition. Experimental results show that our model is ...
Several real problems involve the classification of data into categories or classes. Given a data se...
Several real problems involve the classification of data into categories or classes. Given a data se...
This paper presents two neural network design strategies for incorporating a priori knowledge about...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
We present a novel method to perform multi-class pattern classification with neural networks and tes...
Traditional artificial neural architectures possess limited ability to address the scale problem exh...
It is well-known that ensemble of classifiers can achieve higher accuracy compared to a single class...
Object recognition in images is used in many areas of practical use. Very often, progress in its app...
Multi-class classification is the classification task where separates samples into more than 2 class...
Multi-class classification problems can be efficiently solved by partitioning the original problem i...
This work describes the advantages and disadvantages of using neural networks for pattern recognitio...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
Several real problems involve the classification of data into categories or classes. Given a data se...
Several real problems involve the classification of data into categories or classes. Given a data se...
This paper presents two neural network design strategies for incorporating a priori knowledge about...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
We present a novel method to perform multi-class pattern classification with neural networks and tes...
Traditional artificial neural architectures possess limited ability to address the scale problem exh...
It is well-known that ensemble of classifiers can achieve higher accuracy compared to a single class...
Object recognition in images is used in many areas of practical use. Very often, progress in its app...
Multi-class classification is the classification task where separates samples into more than 2 class...
Multi-class classification problems can be efficiently solved by partitioning the original problem i...
This work describes the advantages and disadvantages of using neural networks for pattern recognitio...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
Several real problems involve the classification of data into categories or classes. Given a data se...
Several real problems involve the classification of data into categories or classes. Given a data se...
This paper presents two neural network design strategies for incorporating a priori knowledge about...