The implementation of a multiple classifier system implies the definition of a rule (combining rule) for determining the most likely class, on the basis of the class attributed by each single classifier. The availability of a criterion to evaluate the reliability of the decision taken by a classifier can be profitably used in order to implement an effective combining rule. In this paper, we propose a method that evaluates the reliability of each classification act by using an e-Support Vector Regression approach. This idea yields to define four combining rules that work also with classifiers providing as their only output the guess class. The results obtained on some standard datasets by these reliability-based rules are compared with those...
In this paper, we continue the theoretical and experimental analysis of two widely used combining ru...
In this paper we present how the classification results can be improved using a set of classifiers w...
In this paper, a theoretical and experimental analysis of linear combiners for multiple classifier s...
The implementation of a multiple classifier system implies the definition of a rule (combining rule)...
The intuition that different text classifiers behave in qualitatively different ways has long motiva...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
Typical pattern recognition applications require to handle both binary and multiclass classification...
A novel method for evaluating the reliability of a classifier on a pattern is proposed based on the ...
Typical pattern recognition applications require to handle both binary and multiclass classification...
Abstract — We propose a new classifier combination method, the signal strength-based combining (SSC)...
Abstract. Recent findings in the domain of combining classifiers provide a surprising revision of th...
AbstractWe propose a data-based procedure for combining a number of individual classifiers in order ...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...
The simultaneous use of multiple classifiers has been shown to provide performance improvement in cl...
The question of how we can exploit the ability to combine different learning entities is fundamental...
In this paper, we continue the theoretical and experimental analysis of two widely used combining ru...
In this paper we present how the classification results can be improved using a set of classifiers w...
In this paper, a theoretical and experimental analysis of linear combiners for multiple classifier s...
The implementation of a multiple classifier system implies the definition of a rule (combining rule)...
The intuition that different text classifiers behave in qualitatively different ways has long motiva...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
Typical pattern recognition applications require to handle both binary and multiclass classification...
A novel method for evaluating the reliability of a classifier on a pattern is proposed based on the ...
Typical pattern recognition applications require to handle both binary and multiclass classification...
Abstract — We propose a new classifier combination method, the signal strength-based combining (SSC)...
Abstract. Recent findings in the domain of combining classifiers provide a surprising revision of th...
AbstractWe propose a data-based procedure for combining a number of individual classifiers in order ...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...
The simultaneous use of multiple classifiers has been shown to provide performance improvement in cl...
The question of how we can exploit the ability to combine different learning entities is fundamental...
In this paper, we continue the theoretical and experimental analysis of two widely used combining ru...
In this paper we present how the classification results can be improved using a set of classifiers w...
In this paper, a theoretical and experimental analysis of linear combiners for multiple classifier s...