Traditional artificial neural architectures possess limited ability to address the scale problem exhibited by a large number of distinct pattern classes and limited training data. To address these problems, this paper explores a novel advanced encoding scheme, which reduces both memory demand and execution time, and provides improved performance. The novel advanced encoding scheme known as the engine encoding, have been implemented in a multi-classifier, which combines the scaled probabilities, configuration information, and the discriminating abilities of the associated component classifiers. The problems of overloading and saturation experienced by traditional networks are solved by training the base classifiers on differing sub-sets of t...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Abstract-A multiple classifier system is a powerful solution to difficult pattern recognition proble...
Classifier combination is a powerful paradigm to deal with difficult pattern classification problems...
Despite the success of many pattern recognition problems in a constrained domain, the task of patter...
The paper describes what to consider when constructing multi-classifier systems (MCS), what is perce...
This paper describes a system managing data fusion in the Pattern Recognition (PR) field. The proble...
This paper presents two neural network design strategies for incorporating a priori knowledge about...
Weightless neural systems have often struggles in terms of speed, performances, and memory issues. T...
Multi-class classification problems can be efficiently solved by partitioning the original problem i...
There is a trend in recent OCR development to improve system performance by combining recognition re...
Combining classifiers is a useful method for solving complex problems in machine learning. The ECOC ...
Classifier combination is a powerful paradigm to deal with difficult pattern classification problems...
The Letter reports the benefits of decomposing the multilayer perceptron (MLP) for pattern recogniti...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
To aggregate diverse learners and to train deep architectures are the two principal avenues towards ...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Abstract-A multiple classifier system is a powerful solution to difficult pattern recognition proble...
Classifier combination is a powerful paradigm to deal with difficult pattern classification problems...
Despite the success of many pattern recognition problems in a constrained domain, the task of patter...
The paper describes what to consider when constructing multi-classifier systems (MCS), what is perce...
This paper describes a system managing data fusion in the Pattern Recognition (PR) field. The proble...
This paper presents two neural network design strategies for incorporating a priori knowledge about...
Weightless neural systems have often struggles in terms of speed, performances, and memory issues. T...
Multi-class classification problems can be efficiently solved by partitioning the original problem i...
There is a trend in recent OCR development to improve system performance by combining recognition re...
Combining classifiers is a useful method for solving complex problems in machine learning. The ECOC ...
Classifier combination is a powerful paradigm to deal with difficult pattern classification problems...
The Letter reports the benefits of decomposing the multilayer perceptron (MLP) for pattern recogniti...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
To aggregate diverse learners and to train deep architectures are the two principal avenues towards ...
Many of the studies related to supervised learning have focused on the resolution of multiclass prob...
Abstract-A multiple classifier system is a powerful solution to difficult pattern recognition proble...
Classifier combination is a powerful paradigm to deal with difficult pattern classification problems...