Recent work combining population based heuristics and flexible models such as fuzzy rules, neural networks, and others, has led to novel and powerful approaches in many problem areas. This study tests an implementation of cellular evolution for fuzzy rule learning problems and compares the results with other related approaches. The paper also examines characteristics of the cellular evolutionary approach in generating more diverse solutions in a multiobjective specification of the learning task, and finds that solutions seem to have useful properties that could enable anticipating out of sample performance. We consider a bi-objective problem of learning fuzzy classifiers that balance accuracy and interpretability requirements.Adam Ghandar, ...
An overview of the application of evolutionary computation to fuzzy knowledge discovery is presented...
Fuzzy rule bases provide a tool for modeling complex systems and approximating functions. Originally...
In this paper, we show an experimental study on a set of evolutionary fuzzy classifiers (EFCs) purpo...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to...
In this paper, we apply the cellular multi-objective genetic algorithms (C-MOGA) to the design of fu...
In this paper, we propose the use of a multiobjective evolutionary approach to generate a set of lin...
AbstractThis paper examines the interpretability-accuracy tradeoff in fuzzy rule-based classifiers u...
A fuzzy classifier system framework is proposed which employs a tree-based representation for fuzzy ...
This paper presents a novel boosting algorithm for genetic learning of fuzzy classification rules. T...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
Fuzzy rule-based systems are universal approximators of non-linear functions [1] as multilayer feedf...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Several methods have been proposed to automatically generate fuzzy rule-based systems (FRBSs) from d...
An overview of the application of evolutionary computation to fuzzy knowledge discovery is presented...
Fuzzy rule bases provide a tool for modeling complex systems and approximating functions. Originally...
In this paper, we show an experimental study on a set of evolutionary fuzzy classifiers (EFCs) purpo...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to...
In this paper, we apply the cellular multi-objective genetic algorithms (C-MOGA) to the design of fu...
In this paper, we propose the use of a multiobjective evolutionary approach to generate a set of lin...
AbstractThis paper examines the interpretability-accuracy tradeoff in fuzzy rule-based classifiers u...
A fuzzy classifier system framework is proposed which employs a tree-based representation for fuzzy ...
This paper presents a novel boosting algorithm for genetic learning of fuzzy classification rules. T...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
Fuzzy rule-based systems are universal approximators of non-linear functions [1] as multilayer feedf...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
Several methods have been proposed to automatically generate fuzzy rule-based systems (FRBSs) from d...
An overview of the application of evolutionary computation to fuzzy knowledge discovery is presented...
Fuzzy rule bases provide a tool for modeling complex systems and approximating functions. Originally...
In this paper, we show an experimental study on a set of evolutionary fuzzy classifiers (EFCs) purpo...