Feature selection is considered as one of the most important data pre-processing step in different modelling fields, especially for prediction and classification purposes. Feature selection belongs to the wider class of data mining procedures, as it allows to discover the variables that mostly affect a given phenomenon from an analysis of the available data, by thus increasing the knowledge of the considered process or phenomenon. There are three main categories of feature selection approaches, namely filter, wrappers and embedded methods: this work is focused on the first one and, in particular, on a fuzzy logic-based procedure which combines some traditional filter methods. Filter methods exploit intrinsic properties of the data to select...
Nowadays the amount of data that is collected in various settings is growing rapidly. These elaborat...
The interpretability of classification systems refers to the ability of these to express their behav...
This paper introduces a filter, named FCF (Fuzzy Clustering-based Filter), for removing redundant fe...
Feature selection is considered as one of the most important data pre-processing step in different m...
One of the most important stages in data preprocessing for data mining is feature selection. Real-wo...
The presence of less relevant or highly correlated features often decrease classification accuracy. ...
Fuzzy rule-based models have been extensively used in regression problems. Besides high accuracy, on...
In order to process large amount of data, it is necessary to use computers. It is possible to use st...
AbstractFeature selection in which most informative variables are selected for model generation is a...
This paper highlights the need to reduce the dimension of the feature space in classification proble...
Recent developments in technology have led to accelerated growth of data, and the associated challen...
When determining the degree of coincidence of any multi-feature obtained information, received in th...
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 interpretability of classification systems refers to the ability of these to express their behav...
This paper introduces a filter, named FCF (Fuzzy Clustering-based Filter), for removing redundant fe...
Feature selection is considered as one of the most important data pre-processing step in different m...
One of the most important stages in data preprocessing for data mining is feature selection. Real-wo...
The presence of less relevant or highly correlated features often decrease classification accuracy. ...
Fuzzy rule-based models have been extensively used in regression problems. Besides high accuracy, on...
In order to process large amount of data, it is necessary to use computers. It is possible to use st...
AbstractFeature selection in which most informative variables are selected for model generation is a...
This paper highlights the need to reduce the dimension of the feature space in classification proble...
Recent developments in technology have led to accelerated growth of data, and the associated challen...
When determining the degree of coincidence of any multi-feature obtained information, received in th...
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 interpretability of classification systems refers to the ability of these to express their behav...
This paper introduces a filter, named FCF (Fuzzy Clustering-based Filter), for removing redundant fe...