The interpretability of classification systems refers to the ability of these to express their behaviour in a way that is easily understandable by a user. Interpretable classification models allow for external validation by an expert and, in certain disciplines such as medicine or business, providing information about decision making is essential for ethical and human reasons. Fuzzy rule-based classification systems are consolidated powerful classification tools based on fuzzy logic and designed to produce interpretable models; however, in presence of a large number of attributes, even rule-based models tend to be too complex to be easily interpreted. In this work, we propose a novel multivariate feature selection method in which both searc...
In this work, a data set describing phone interactions arising in a multichannel and multiskill cont...
This paper discusses the use of multicriteria genetic algorithms for feature selection in classifica...
This paper discusses the use of multicriteria genetic algorithms for feature selection in classifica...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to...
This paper shows how a small number of fuzzy rules can be selected for designing interpretable fuzzy...
This thesis presents data-driven methods to learn interpretable and accurate fuzzy models (FMs) for ...
This thesis presents data-driven methods to learn interpretable and accurate fuzzy models (FMs) for ...
Abstract—In this paper, we propose an index that helps preserve the semantic interpretability of lin...
In this work, a data set describing phone interactions arising in a multichannel and multiskill cont...
In this work, a data set describing phone interactions arising in a multichannel and multiskill cont...
This paper discusses the use of multicriteria genetic algorithms for feature selection in classifica...
This paper discusses the use of multicriteria genetic algorithms for feature selection in classifica...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to...
This paper shows how a small number of fuzzy rules can be selected for designing interpretable fuzzy...
This thesis presents data-driven methods to learn interpretable and accurate fuzzy models (FMs) for ...
This thesis presents data-driven methods to learn interpretable and accurate fuzzy models (FMs) for ...
Abstract—In this paper, we propose an index that helps preserve the semantic interpretability of lin...
In this work, a data set describing phone interactions arising in a multichannel and multiskill cont...
In this work, a data set describing phone interactions arising in a multichannel and multiskill cont...
This paper discusses the use of multicriteria genetic algorithms for feature selection in classifica...
This paper discusses the use of multicriteria genetic algorithms for feature selection in classifica...