AbstractThis paper examines the interpretability-accuracy tradeoff in fuzzy rule-based classifiers using a multiobjective fuzzy genetics-based machine learning (GBML) algorithm. Our GBML algorithm is a hybrid version of Michigan and Pittsburgh approaches, which is implemented in the framework of evolutionary multiobjective optimization (EMO). Each fuzzy rule is represented by its antecedent fuzzy sets as an integer string of fixed length. Each fuzzy rule-based classifier, which is a set of fuzzy rules, is represented as a concatenated integer string of variable length. Our GBML algorithm simultaneously maximizes the accuracy of rule sets and minimizes their complexity. The accuracy is measured by the number of correctly classified training ...
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 ...
AbstractThis paper examines the interpretability-accuracy tradeoff in fuzzy rule-based classifiers u...
www.elsevier.com/locate/ijar0888-613X/ $- see front matter 2006 Elsevier Inc. All rights reserved.f...
Fuzzy rule-based systems are universal approximators of non-linear functions [1] as multilayer feedf...
The paper addresses several open problems regarding the automatic design of fuzzy rule-based systems...
This special issue encompasses four papers devoted to the recent developments in the field of ‘‘Gen...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
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 ...
Interpretability of classification systems, which refers to the ability of these systems to express ...
AbstractThe identification of a model is one of the key issues in the field of fuzzy system modeling...
AbstractThis paper presents a hybrid method for identification of Pareto-optimal fuzzy classifiers (...
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 ...
AbstractThis paper examines the interpretability-accuracy tradeoff in fuzzy rule-based classifiers u...
www.elsevier.com/locate/ijar0888-613X/ $- see front matter 2006 Elsevier Inc. All rights reserved.f...
Fuzzy rule-based systems are universal approximators of non-linear functions [1] as multilayer feedf...
The paper addresses several open problems regarding the automatic design of fuzzy rule-based systems...
This special issue encompasses four papers devoted to the recent developments in the field of ‘‘Gen...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
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 ...
Interpretability of classification systems, which refers to the ability of these systems to express ...
AbstractThe identification of a model is one of the key issues in the field of fuzzy system modeling...
AbstractThis paper presents a hybrid method for identification of Pareto-optimal fuzzy classifiers (...
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 ...