The study is concerned with data and feature reduction in fuzzy modeling. As these reduction activities are advantageous to fuzzy models in terms of both the effectiveness of their construction and the interpretation of the resulting models, their realization deserves particular attention. The formation of a subset of meaningful features and a subset of essential instances is discussed in the context of fuzzy-rule-based models. In contrast to the existing studies, which are focused predominantly on feature selection (namely, a reduction of the input space), a position advocated here is that a reduction has to involve both data and features to become efficient to the design of fuzzy model. The reduction problem is combinatorial in its nature...
One of the most important stages in data preprocessing for data mining is feature selection. Real-wo...
This paper highlights the need to reduce the dimension of the feature space in classification proble...
In this paper, we propose a fast feature selection technique for clustering-based fuzzy modeling. Th...
Advances in data collection and storage capabilities during the past decades have led to an informat...
The most challenging problem in the design of fuzzy rule-based classification systems is the constru...
Particle swarm optimization (PSO) is a promising method for feature selection. When using PSO to sol...
Nowadays the amount of data that is collected in various settings is growing rapidly. These elaborat...
Nowadays the amount of data that is collected in various settings is growing rapidly. These elaborat...
The presence of less relevant or highly correlated features often decrease classification accuracy. ...
This paper proposes a new approach for automating the structure and parameter learning of fuzzy syst...
Cut-based strong fuzzy partitions (SFP) are characterized by cuts, i.e. points in the universe of di...
This paper presents a fuzzy classifier with the fuzzy rules base extracted from data and optimised b...
In this paper, a systematic data-driven fuzzy modelling approach is proposed, which integrates trans...
This paper discusses a method for improving accuracy of fuzzy-rule-based classifiers using particle ...
Forming an efficient feature space for classification problems is a grand challenge in pattern recog...
One of the most important stages in data preprocessing for data mining is feature selection. Real-wo...
This paper highlights the need to reduce the dimension of the feature space in classification proble...
In this paper, we propose a fast feature selection technique for clustering-based fuzzy modeling. Th...
Advances in data collection and storage capabilities during the past decades have led to an informat...
The most challenging problem in the design of fuzzy rule-based classification systems is the constru...
Particle swarm optimization (PSO) is a promising method for feature selection. When using PSO to sol...
Nowadays the amount of data that is collected in various settings is growing rapidly. These elaborat...
Nowadays the amount of data that is collected in various settings is growing rapidly. These elaborat...
The presence of less relevant or highly correlated features often decrease classification accuracy. ...
This paper proposes a new approach for automating the structure and parameter learning of fuzzy syst...
Cut-based strong fuzzy partitions (SFP) are characterized by cuts, i.e. points in the universe of di...
This paper presents a fuzzy classifier with the fuzzy rules base extracted from data and optimised b...
In this paper, a systematic data-driven fuzzy modelling approach is proposed, which integrates trans...
This paper discusses a method for improving accuracy of fuzzy-rule-based classifiers using particle ...
Forming an efficient feature space for classification problems is a grand challenge in pattern recog...
One of the most important stages in data preprocessing for data mining is feature selection. Real-wo...
This paper highlights the need to reduce the dimension of the feature space in classification proble...
In this paper, we propose a fast feature selection technique for clustering-based fuzzy modeling. Th...