This paper presents an adaptive fuzzy rule-based classification system using a new hybrid modeling method that integrates both expert knowledge and new knowledge learnt from data. Inspired by human learning, the membership functions of fuzzy rules are optimized based on a hybrid error function that combines errors caused by the class predefined by expert knowledge and nearby historical data. The weights of the two errors can be adjusted by a conservative parameter. Experimental results show that our method significantly reduces classification ambiguity in 9 datasets
Abstract. In this contribution, we study the influence of an Evolution-ary Adaptive Inference System...
Many fuzzy rule induction algorithms have been proposed in the past. Most of them tend to generate t...
Fuzzy Rule-Based Systems are appropriate tools to deal with classification problems due to their goo...
Within the field of linguistic fuzzy modeling with fuzzy rule-based sys-tems, the automatic derivati...
AbstractIn many real application areas, the data used are highly skewed and the number of instances ...
Fuzzy rule-based systems (FRBSs) are proficient in dealing with cognitive uncertainties like vaguene...
Over the years, one of the challenges of a rule based expert system is the possibility of evolving a...
Rule induction as a method of constructing classifiers is of particular interest to data mining beca...
AbstractFuzzy Rule-Based Systems have been succesfully applied to pattern classification problems. I...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
Abstract The paper considers both knowledge acquisition and knowledge interpretation tasks as tightl...
AbstractFuzzy Rule-Based Systems are appropriate tools to deal with classification problems due to t...
This paper proposes a new novel method for the online construction of a Hierarchical Fuzzy Rule Base...
An adaptive method to construct compact fuzzy systems for solving pattern classication problems is p...
In this paper a technique is proposed to tolerate missing values based on a system of fuzzy rules fo...
Abstract. In this contribution, we study the influence of an Evolution-ary Adaptive Inference System...
Many fuzzy rule induction algorithms have been proposed in the past. Most of them tend to generate t...
Fuzzy Rule-Based Systems are appropriate tools to deal with classification problems due to their goo...
Within the field of linguistic fuzzy modeling with fuzzy rule-based sys-tems, the automatic derivati...
AbstractIn many real application areas, the data used are highly skewed and the number of instances ...
Fuzzy rule-based systems (FRBSs) are proficient in dealing with cognitive uncertainties like vaguene...
Over the years, one of the challenges of a rule based expert system is the possibility of evolving a...
Rule induction as a method of constructing classifiers is of particular interest to data mining beca...
AbstractFuzzy Rule-Based Systems have been succesfully applied to pattern classification problems. I...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
Abstract The paper considers both knowledge acquisition and knowledge interpretation tasks as tightl...
AbstractFuzzy Rule-Based Systems are appropriate tools to deal with classification problems due to t...
This paper proposes a new novel method for the online construction of a Hierarchical Fuzzy Rule Base...
An adaptive method to construct compact fuzzy systems for solving pattern classication problems is p...
In this paper a technique is proposed to tolerate missing values based on a system of fuzzy rules fo...
Abstract. In this contribution, we study the influence of an Evolution-ary Adaptive Inference System...
Many fuzzy rule induction algorithms have been proposed in the past. Most of them tend to generate t...
Fuzzy Rule-Based Systems are appropriate tools to deal with classification problems due to their goo...