Designing classifiers may follow different goals. Which goal to prefer among others depends on the given cost situation and the class distribution. For example, a classifier designed for best accuracy in terms of misclassifica- tions may fail when the cost of misclassification of one class is much higher than that of the other. This paper presents a decision-theoretic extension to make fuzzy rule generation cost-sensitive. Furthermore, it will be shown how interpretability aspects and the costs of feature acquisition can be ac- counted for during classifier design. Natural language text is used to explain the generated fuzzy rules and their design proces
AbstractThe data-driven identification of fuzzy rule-based classifiers for high-dimensional problems...
Abstract—This paper examines the effect of rule weights in fuzzy rule-based classification systems. ...
This paper is intended to verify that cost-sensitive learning is a competitive approach for learning...
AbstractCost-sensitive classification is based on a set of weights defining the expected cost of mis...
AbstractCost-sensitive classification is based on a set of weights defining the expected cost of mis...
In a fuzzy classifier, the maping “inputs–output” is described by the linguistic 〈If–then〉 rules, th...
AbstractThis paper examines the interpretability-accuracy tradeoff in fuzzy rule-based classifiers u...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
Centre for Intelligent Systems and their ApplicationsThis research identifies and investigates major...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
This paper shows how a small number of fuzzy rules can be selected for designing interpretable fuzzy...
Abstract—This paper compares the performance of various rule-based classification systems. In the cl...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
AbstractThe data-driven identification of fuzzy rule-based classifiers for high-dimensional problems...
Abstract—This paper examines the effect of rule weights in fuzzy rule-based classification systems. ...
This paper is intended to verify that cost-sensitive learning is a competitive approach for learning...
AbstractCost-sensitive classification is based on a set of weights defining the expected cost of mis...
AbstractCost-sensitive classification is based on a set of weights defining the expected cost of mis...
In a fuzzy classifier, the maping “inputs–output” is described by the linguistic 〈If–then〉 rules, th...
AbstractThis paper examines the interpretability-accuracy tradeoff in fuzzy rule-based classifiers u...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
Centre for Intelligent Systems and their ApplicationsThis research identifies and investigates major...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
This paper shows how a small number of fuzzy rules can be selected for designing interpretable fuzzy...
Abstract—This paper compares the performance of various rule-based classification systems. In the cl...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
In 1965 Lofti A. Zadeh proposed fuzzy sets as a generalization of crisp (or classic) sets to address...
AbstractThe data-driven identification of fuzzy rule-based classifiers for high-dimensional problems...
Abstract—This paper examines the effect of rule weights in fuzzy rule-based classification systems. ...
This paper is intended to verify that cost-sensitive learning is a competitive approach for learning...