Imbalanced classification problems are attracting the attention of the research community because they are prevalent in real-world problems and they impose extra difficulties for learning methods. Fuzzy rule-based classification systems have been applied to cope with these problems, mostly together with sampling techniques. In this paper, we define a new fuzzy association rule-based classifier, named FARCI, to tackle directly imbalanced classification problems. Our new proposal belongs to the algorithm modification category, since it is constructed on the basis of the state-of-the-art fuzzy classifier FARC–HD. Specifically, we modify its three learning stages, aiming at boosting the number of fuzzy rules of the minority class as well as sim...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
In this work our aim is to increase the performance of Fuzzy Rule Based Classifications Systems in t...
In this paper, for solving imbalanced classification problem, more attention is placed on data point...
In this contribution we carry out an analysis of the rule weights and Fuzzy Reasoning Methods for F...
This paper is intended to verify that cost-sensitive learning is a competitive approach for learning...
AbstractIn many real application areas, the data used are highly skewed and the number of instances ...
In this paper, we show an experimental study on a set of evolutionary fuzzy classifiers (EFCs) purpo...
The usage of imbalanced databases is a recurrent problem in real-world data such as medical diagnost...
AbstractIn many real application areas, the data used are highly skewed and the number of instances ...
In many real application areas, the data used are highly skewed and the number of instances for som...
Abstract—There are many real-world classification problems in-volving multiple classes, e.g., in bio...
Abstract — Classification in imbalanced domains is an important problem in Data Mining. We refer to ...
This paper proposes a Genetic Algorithm for jointly performing a feature selection and granularity l...
Abstract—Imbalanced classification deals with learning from data with a disproportional number of sa...
Imbalanced classification deals with learning from data with a disproportional number of samples in ...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
In this work our aim is to increase the performance of Fuzzy Rule Based Classifications Systems in t...
In this paper, for solving imbalanced classification problem, more attention is placed on data point...
In this contribution we carry out an analysis of the rule weights and Fuzzy Reasoning Methods for F...
This paper is intended to verify that cost-sensitive learning is a competitive approach for learning...
AbstractIn many real application areas, the data used are highly skewed and the number of instances ...
In this paper, we show an experimental study on a set of evolutionary fuzzy classifiers (EFCs) purpo...
The usage of imbalanced databases is a recurrent problem in real-world data such as medical diagnost...
AbstractIn many real application areas, the data used are highly skewed and the number of instances ...
In many real application areas, the data used are highly skewed and the number of instances for som...
Abstract—There are many real-world classification problems in-volving multiple classes, e.g., in bio...
Abstract — Classification in imbalanced domains is an important problem in Data Mining. We refer to ...
This paper proposes a Genetic Algorithm for jointly performing a feature selection and granularity l...
Abstract—Imbalanced classification deals with learning from data with a disproportional number of sa...
Imbalanced classification deals with learning from data with a disproportional number of samples in ...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
In this work our aim is to increase the performance of Fuzzy Rule Based Classifications Systems in t...
In this paper, for solving imbalanced classification problem, more attention is placed on data point...