The Fuzzy Integral (FI) is a non-linear aggregation operator which enables the fusion of information from multiple sources in respect to a Fuzzy Measure (FM) which captures the worth of both the individual sources and all their possible combinations. Based on the expected potential of non-linear aggregation offered by the FI, its application to decision-level fusion in ensemble classifiers, i.e. to fuse multiple classifiers outputs towards one superior decision level output, has recently been explored. A key example of such a FI-FM ensemble classification method is the Decision-level Fuzzy Integral Multiple Kernel Learning (DeFIMKL) algorithm, which aggregates the outputs of kernel based classifiers through the use of the Choquet FI with re...
This paper compares empirically four bagging-based ensemble classifiers, namely the ensemble adaptiv...
Kernel methods for classification is a well-studied area in which data are implicitly mapped from a ...
The fuzzy integral (FI) with respect to a fuzzy measure (FM) is a powerful means of aggregating info...
The Fuzzy Integral (FI) is a non-linear aggregation operator which enables the fusion of information...
The Fuzzy Integral (FI) is a non-linear aggregation operator which enables the fusion of information...
The Fuzzy Integral (FI) is a non-linear aggregation operator which enables the fusion of information...
Aggregation operators are mathematical functions that enable the fusion of information from multiple...
Aggregation operators are mathematical functions that enable the fusion of information from multiple...
The fuzzy integral (FI) is a nonlinear aggregation operator whose behavior is defined by the fuzzy m...
The Choquet integral (ChI) is an aggregation operator defined with respect to a fuzzy measure (FM). ...
Previously, we investigated the definition and applicability of the fuzzy integral (FI) for nonlinea...
Fuzzy integrals (FIs) are powerful aggregation operators that fuse information from multiple sources...
In Machine Learning an ensemble refers to the combination of several classifiers with the objective ...
The design of an ensemble of classifiers involves the definition of an aggregation mechanism that pr...
Classification is a popular task of supervised machine learning, which can be achieved by training a...
This paper compares empirically four bagging-based ensemble classifiers, namely the ensemble adaptiv...
Kernel methods for classification is a well-studied area in which data are implicitly mapped from a ...
The fuzzy integral (FI) with respect to a fuzzy measure (FM) is a powerful means of aggregating info...
The Fuzzy Integral (FI) is a non-linear aggregation operator which enables the fusion of information...
The Fuzzy Integral (FI) is a non-linear aggregation operator which enables the fusion of information...
The Fuzzy Integral (FI) is a non-linear aggregation operator which enables the fusion of information...
Aggregation operators are mathematical functions that enable the fusion of information from multiple...
Aggregation operators are mathematical functions that enable the fusion of information from multiple...
The fuzzy integral (FI) is a nonlinear aggregation operator whose behavior is defined by the fuzzy m...
The Choquet integral (ChI) is an aggregation operator defined with respect to a fuzzy measure (FM). ...
Previously, we investigated the definition and applicability of the fuzzy integral (FI) for nonlinea...
Fuzzy integrals (FIs) are powerful aggregation operators that fuse information from multiple sources...
In Machine Learning an ensemble refers to the combination of several classifiers with the objective ...
The design of an ensemble of classifiers involves the definition of an aggregation mechanism that pr...
Classification is a popular task of supervised machine learning, which can be achieved by training a...
This paper compares empirically four bagging-based ensemble classifiers, namely the ensemble adaptiv...
Kernel methods for classification is a well-studied area in which data are implicitly mapped from a ...
The fuzzy integral (FI) with respect to a fuzzy measure (FM) is a powerful means of aggregating info...