Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a classification rule able to identify the correct class for new observations. The resulting classification rule could not always be robust, particularly when imbalanced classes are observed or the data size is not large. In this paper a new approach is presented aimed at evaluating the reliability of a classification rule. It uses a standard classifier but it evaluates the reliability of the obtained classification rule by re-training the classifier on resampled versions of the original data. User-defined misclassification costs are assigned to the obtained confusion matrices and then used as inputs in a Beta regression model which provides ...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
The curse of class imbalance affects the performance of many conventional classification algorithms ...
The curse of class imbalance affects the performance of many conventional classification algorithms ...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
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...
Typical pattern recognition applications require to handle both binary and multiclass classification...
The implementation of a multiple classifier system implies the definition of a rule (combining rule)...
Abstract. A common assumption made in the field of Pattern Recog-nition is that the priors inherent ...
Pattern classification techniques derived from statistical principles have been widely studied and h...
The optimization and evaluation of a pattern recognition system requires different problems like mul...
This paper presents three strategies in order to re-train classifiers in a multi-expert scenario whe...
a b s t r a c t The purpose of this paper is to analyze the imbalanced learning task in the multilab...
Classifiers can provide counts of items per class, but systematic classification errors yield biases...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
The curse of class imbalance affects the performance of many conventional classification algorithms ...
The curse of class imbalance affects the performance of many conventional classification algorithms ...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
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...
Typical pattern recognition applications require to handle both binary and multiclass classification...
The implementation of a multiple classifier system implies the definition of a rule (combining rule)...
Abstract. A common assumption made in the field of Pattern Recog-nition is that the priors inherent ...
Pattern classification techniques derived from statistical principles have been widely studied and h...
The optimization and evaluation of a pattern recognition system requires different problems like mul...
This paper presents three strategies in order to re-train classifiers in a multi-expert scenario whe...
a b s t r a c t The purpose of this paper is to analyze the imbalanced learning task in the multilab...
Classifiers can provide counts of items per class, but systematic classification errors yield biases...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
The curse of class imbalance affects the performance of many conventional classification algorithms ...
The curse of class imbalance affects the performance of many conventional classification algorithms ...