In this paper a new fuzzy system modeling algorithm is introduced as a data analysis and approximate reasoning tool. The performance of the proposed algorithm is tested in two different data sets and compared with some well-known algorithms from the literature. In the comparison two benchmark data sets from the literature, namely the automobile mpg (miles per gallon) prediction and Box and Jenkins gas-furnace data are used. The comparisons demonstrated that the proposed algorithm can be successfully applied in system modeling
[[abstract]]In this paper, a clustering-based algorithm is proposed for automatically constructing a...
AbstractIn recent years, many papers discussing the problems of approximate reasoning based on fuzzy...
This book is an attempt to accumulate the researches on diverse inter disciplinary field of engineer...
Fuzzy system modeling (FSM) is one of the most prominent system modeling tools in analyzing the data...
Fuzzy System Modeling (FSM) is one of the most prominent system modeling tools in analyzing the data...
This paper presents an algorithm for automatically deriving fuzzy rules directly from a set of input...
AbstractWe present different techniques of fuzzy rule generation using the information we can obtain...
This master's thesis is focused on fuzzy decision-making using fuzzy inference systems. In the first...
Fuzzy set theory provides a formal method for modeling complex systems. In classical modeling, syste...
Abstract—For many classification or controlling problems a set of training data is available. To mak...
Fuzzy data such as marks, scores, verbal evaluations, imprecise observations, experts' opinions and ...
It is crucial to evaluate the information obtained from the sensors in a fast and accurate manner in...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Abstract: This paper introduces a new method for fuzzy modeling based on set of input-output data pa...
Building appriopriate system models is an important aspect in the analysis and design of complex sys...
[[abstract]]In this paper, a clustering-based algorithm is proposed for automatically constructing a...
AbstractIn recent years, many papers discussing the problems of approximate reasoning based on fuzzy...
This book is an attempt to accumulate the researches on diverse inter disciplinary field of engineer...
Fuzzy system modeling (FSM) is one of the most prominent system modeling tools in analyzing the data...
Fuzzy System Modeling (FSM) is one of the most prominent system modeling tools in analyzing the data...
This paper presents an algorithm for automatically deriving fuzzy rules directly from a set of input...
AbstractWe present different techniques of fuzzy rule generation using the information we can obtain...
This master's thesis is focused on fuzzy decision-making using fuzzy inference systems. In the first...
Fuzzy set theory provides a formal method for modeling complex systems. In classical modeling, syste...
Abstract—For many classification or controlling problems a set of training data is available. To mak...
Fuzzy data such as marks, scores, verbal evaluations, imprecise observations, experts' opinions and ...
It is crucial to evaluate the information obtained from the sensors in a fast and accurate manner in...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Abstract: This paper introduces a new method for fuzzy modeling based on set of input-output data pa...
Building appriopriate system models is an important aspect in the analysis and design of complex sys...
[[abstract]]In this paper, a clustering-based algorithm is proposed for automatically constructing a...
AbstractIn recent years, many papers discussing the problems of approximate reasoning based on fuzzy...
This book is an attempt to accumulate the researches on diverse inter disciplinary field of engineer...