Fuzzy interpolation offers the potential to model problems with sparse rule bases, as opposed to dense rule bases deployed in traditional fuzzy systems. It thus supports the simplification of complex fuzzy models and facilitates inferences when only limited knowledge is available. This paper first introduces the general concept of representative values (RVs), and then uses it to present an interpolative reasoning method which can be used to interpolate fuzzy rules involving arbitrary polygonal fuzzy sets, by means of scale and move transformations. Various interpolation results over different RV implementations are illustrated to show the flexibility and diversity of this method. A realistic application shows that the interpolation-based in...
Fuzzy rule interpolation is an important technique for performing inferences with sparse rule bases....
Fuzzy interpolative reasoning plays an important role in fuzzy modelling as it not only helps to red...
Due to its high performance and comprehensibility, fuzzy modelling is becoming more and more popular...
Fuzzy interpolation offers the potential to model problems with sparse rule bases, as opposed to den...
Fuzzy interpolative reasoning offers the potential to model problems using sparse rule bases, as opp...
Interpolative reasoning does not only help reduce the complexity of fuzzy models but also makes infe...
This paper generalises the previously proposed interpolative reasoning method [5] to cover interpola...
Interpolative reasoning does not only help reduce the complexity of fuzzy models but also makes inf...
This paper generalises the previously proposed interpolative reasoning method 151 to cover interpol...
Fuzzy rule interpolation (FRI) is of particular significance for reasoning in the presence of insuff...
Fuzzy rule interpolation enables fuzzy systems to perform inference with a sparse rule base. However...
In support of reasoning with sparse rule bases, fuzzy rule interpolation (FRI) offers a helpful infe...
As a substantial extension to fuzzy rule interpolation that works based on two neighbouring rules fl...
Fuzzy inference systems provide a simple yet effective solution to complex non-linear problems, whic...
Fuzzy interpolative reasoning has been extensively studied due to its ability to enhance the robustn...
Fuzzy rule interpolation is an important technique for performing inferences with sparse rule bases....
Fuzzy interpolative reasoning plays an important role in fuzzy modelling as it not only helps to red...
Due to its high performance and comprehensibility, fuzzy modelling is becoming more and more popular...
Fuzzy interpolation offers the potential to model problems with sparse rule bases, as opposed to den...
Fuzzy interpolative reasoning offers the potential to model problems using sparse rule bases, as opp...
Interpolative reasoning does not only help reduce the complexity of fuzzy models but also makes infe...
This paper generalises the previously proposed interpolative reasoning method [5] to cover interpola...
Interpolative reasoning does not only help reduce the complexity of fuzzy models but also makes inf...
This paper generalises the previously proposed interpolative reasoning method 151 to cover interpol...
Fuzzy rule interpolation (FRI) is of particular significance for reasoning in the presence of insuff...
Fuzzy rule interpolation enables fuzzy systems to perform inference with a sparse rule base. However...
In support of reasoning with sparse rule bases, fuzzy rule interpolation (FRI) offers a helpful infe...
As a substantial extension to fuzzy rule interpolation that works based on two neighbouring rules fl...
Fuzzy inference systems provide a simple yet effective solution to complex non-linear problems, whic...
Fuzzy interpolative reasoning has been extensively studied due to its ability to enhance the robustn...
Fuzzy rule interpolation is an important technique for performing inferences with sparse rule bases....
Fuzzy interpolative reasoning plays an important role in fuzzy modelling as it not only helps to red...
Due to its high performance and comprehensibility, fuzzy modelling is becoming more and more popular...