Fuzzy rule interpolation (FRI) is an important technique for performing inference with sparse rule bases. Even when a given observation has no overlap with the antecedent values of any existing rules, FRI may still derive a conclusion. In particular, the scale and move transformation-based approach can handle interpolation and extrapolation with multiple multi-antecedent rules. However, the difficulty in defining the required precise-valued membership functions significantly restricts the application of FRI. Type-2 fuzzy sets help to alleviate such limitations because their membership functions are themselves fuzzy. This paper extends the existing transformation-based approach of FRI by using interval type-2 fuzzy sets. The proposed approac...
Interpolative reasoning does not only help reduce the complexity of fuzzy models but also makes infe...
Fuzzy rule interpolation is well known for reducing the complexity of fuzzy models and making infere...
Fuzzy rule interpolation enables fuzzy systems to perform inference with a sparse rule base. However...
Fuzzy rule interpolation (FRI) is an important technique for performing inference with sparse rule b...
In support of reasoning with sparse rule bases, fuzzy rule interpolation (FRI) offers a helpful infe...
Fuzzy rule interpolation enables fuzzy inference with sparse rule bases by interpolating inference r...
Abstract — Interpolative reasoning does not only help reduce the complexity of fuzzy models but also...
Fuzzy rule interpolation (FRI) strongly supports approximate inference when a new observation matche...
Traditional fuzzy rule interpolation (FRI) methods typically utilise Euclidean distances between an ...
Fuzzy Rule Interpolation (FRI) provides a useful mechanism to derive reasonable approximate inferenc...
Fuzzy interpolative reasoning has been extensively studied due to its ability to enhance the robustn...
Fuzzy rule interpolation (FRI) offers a useful means for reducing the complexity of fuzzy models and...
Fuzzy rule interpolation (FRI) enables fuzzy inference systems to derive consequences when the obser...
Fuzzy rule interpolation (FRI) is of particular significance for reasoning in the presence of insuff...
Interpolative reasoning does not only help reduce the complexity of fuzzy models but also makes infe...
Fuzzy rule interpolation is well known for reducing the complexity of fuzzy models and making infere...
Fuzzy rule interpolation enables fuzzy systems to perform inference with a sparse rule base. However...
Fuzzy rule interpolation (FRI) is an important technique for performing inference with sparse rule b...
In support of reasoning with sparse rule bases, fuzzy rule interpolation (FRI) offers a helpful infe...
Fuzzy rule interpolation enables fuzzy inference with sparse rule bases by interpolating inference r...
Abstract — Interpolative reasoning does not only help reduce the complexity of fuzzy models but also...
Fuzzy rule interpolation (FRI) strongly supports approximate inference when a new observation matche...
Traditional fuzzy rule interpolation (FRI) methods typically utilise Euclidean distances between an ...
Fuzzy Rule Interpolation (FRI) provides a useful mechanism to derive reasonable approximate inferenc...
Fuzzy interpolative reasoning has been extensively studied due to its ability to enhance the robustn...
Fuzzy rule interpolation (FRI) offers a useful means for reducing the complexity of fuzzy models and...
Fuzzy rule interpolation (FRI) enables fuzzy inference systems to derive consequences when the obser...
Fuzzy rule interpolation (FRI) is of particular significance for reasoning in the presence of insuff...
Interpolative reasoning does not only help reduce the complexity of fuzzy models but also makes infe...
Fuzzy rule interpolation is well known for reducing the complexity of fuzzy models and making infere...
Fuzzy rule interpolation enables fuzzy systems to perform inference with a sparse rule base. However...