We propose an unconstrained global continuous optimization method based on tabu search and harmony search to support the design of fuzzy linear regression (FLR) models. Tabu and harmony search strategies are used for diversification and intensification of FLR, respectively. The proposed approach offers the flexibility to use any kind of an objective function based on clients requirements or requests and the nature of the dataset and then attains its minimum error. Moreover, we elaborate on the error produced by this method and compare it with the errors resulting from the other known estimation methods. To study the performance of the method, three categories of datasets are considered: Numeric inputssymmetric fuzzy outputs, symmetric fuzzy...
[[abstract]]The method for obtaining the fuzzy estimates of regression parameters with the help of &...
In recent years, the fuzzy linear regression (FLR) approach is widely applied in the quality functio...
Fuzzy linear regression (FLR) approaches are widely used for modeling relations between variables th...
Thesis (PhD)--Macquarie University, Faculty of Science, Dept. of Computing, 2012.Bibliography: p. 14...
In this paper, a new fuzzy harmony search algorithm (FHS) for solving optimization problems is prese...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
In recent years, many researchers have utilized metaheuristic optimization algorithms along with fuz...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
Linear programming (LP) is the most widely used optimization technique for solving real-life problem...
Abstr act. Traditional optimization methods have been applied for years to high-yield fertilization ...
This paper presents a method for dynamic parameter adaptation in the harmony search algorithm (HS) b...
There is uncertainty that the crisp function in classic regression analysis presents the relationshi...
This article focuses on the dynamic parameter adaptation in the harmony search algorithm using Type-...
This paper presents an approach to fuzzy rule base design using tabu search algorithm (TSA) for nonl...
In this paper, we address the issues related to the design of fuzzy robust linear regression algorit...
[[abstract]]The method for obtaining the fuzzy estimates of regression parameters with the help of &...
In recent years, the fuzzy linear regression (FLR) approach is widely applied in the quality functio...
Fuzzy linear regression (FLR) approaches are widely used for modeling relations between variables th...
Thesis (PhD)--Macquarie University, Faculty of Science, Dept. of Computing, 2012.Bibliography: p. 14...
In this paper, a new fuzzy harmony search algorithm (FHS) for solving optimization problems is prese...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
In recent years, many researchers have utilized metaheuristic optimization algorithms along with fuz...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
Linear programming (LP) is the most widely used optimization technique for solving real-life problem...
Abstr act. Traditional optimization methods have been applied for years to high-yield fertilization ...
This paper presents a method for dynamic parameter adaptation in the harmony search algorithm (HS) b...
There is uncertainty that the crisp function in classic regression analysis presents the relationshi...
This article focuses on the dynamic parameter adaptation in the harmony search algorithm using Type-...
This paper presents an approach to fuzzy rule base design using tabu search algorithm (TSA) for nonl...
In this paper, we address the issues related to the design of fuzzy robust linear regression algorit...
[[abstract]]The method for obtaining the fuzzy estimates of regression parameters with the help of &...
In recent years, the fuzzy linear regression (FLR) approach is widely applied in the quality functio...
Fuzzy linear regression (FLR) approaches are widely used for modeling relations between variables th...