[[abstract]]Fuzzy rules generation is known an important task in designing fuzzy systems. This article applies an evolutionary fuzzy rules learning scheme to approach desired fuzzy systems having a lower fuzzy rules. The proposed learning scheme overcomes limitations of conventional fuzzy rules generation and completes the complex searching problems to extract the desired fuzzy system. In this article, aggregations of hyper-ellipsoids fuzzy partitions with different sizes and different positions are suggested to approximate the knowledge rule base of fuzzy systems whose membership functions are arbitrarily shaped and flexibly tuned in parameters searching space. Several corresponding parameters in defining the region of such hyper-ellipsoid...
[[abstract]]In this paper, a parameter structure of fuzzy system is presented along with a fuzzy set...
A novel method of learning complex fuzzy decision regions in the n-dimensional feature space is prop...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
[[abstract]]This article presents an innovative method for designing fuzzy systems composed of fewer...
We discuss the problem of learning fuzzy rules using Evolutionary Learning techniques, such as Genet...
This paper presents a novel boosting algorithm for genetic learning of fuzzy classification rules. T...
In this presentation we examine issues in the construction of a fuzzy logic system to model a comple...
Evolutionary algorithms have been successfully applied to optimize the rulebase of fuzzy systems. Th...
A fuzzy classifier using multiple ellipsoids approximating decision regions for classification is to...
: This paper proposes two different approaches to apply Genetic Algorithms to Fuzzy Logic Controller...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
For the design of a fuzzy controller it is necessary to choose, besides other parameters, suitable m...
In essence, data mining consists of extracting knowledge from data. This paper proposes a co-evoluti...
[[abstract]]This paper presents an innovative method for extracting fuzzy rules directly from numeri...
A fuzzy classifier system framework is proposed which employs a tree-based representation for fuzzy ...
[[abstract]]In this paper, a parameter structure of fuzzy system is presented along with a fuzzy set...
A novel method of learning complex fuzzy decision regions in the n-dimensional feature space is prop...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
[[abstract]]This article presents an innovative method for designing fuzzy systems composed of fewer...
We discuss the problem of learning fuzzy rules using Evolutionary Learning techniques, such as Genet...
This paper presents a novel boosting algorithm for genetic learning of fuzzy classification rules. T...
In this presentation we examine issues in the construction of a fuzzy logic system to model a comple...
Evolutionary algorithms have been successfully applied to optimize the rulebase of fuzzy systems. Th...
A fuzzy classifier using multiple ellipsoids approximating decision regions for classification is to...
: This paper proposes two different approaches to apply Genetic Algorithms to Fuzzy Logic Controller...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
For the design of a fuzzy controller it is necessary to choose, besides other parameters, suitable m...
In essence, data mining consists of extracting knowledge from data. This paper proposes a co-evoluti...
[[abstract]]This paper presents an innovative method for extracting fuzzy rules directly from numeri...
A fuzzy classifier system framework is proposed which employs a tree-based representation for fuzzy ...
[[abstract]]In this paper, a parameter structure of fuzzy system is presented along with a fuzzy set...
A novel method of learning complex fuzzy decision regions in the n-dimensional feature space is prop...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...