The Wang-Mendel Approach (WMA) focuses on combining the numerical as well as linguistic information for achieving greater explainability for inference models. The standard WMA models the linguistic information using type-1 (T1) fuzzy sets (FSs), which have a reduced capability to model the semantics of linguistic information. Therefore, we propose a novel Enhanced WMA, which models the linguistic information using the type-2 (T2) FSs. Further, our Enhanced T2 FS based WMA can be modified to reflect the use of interval type-2 (IT2) FSs, for modeling linguistic uncertainty. IT2 FSs are suitable when better uncertainty handling capabilities are required compared to T1 FSs, however, at a computational cost lesser than the T2 FSs. Performance of...
Fuzzy system modeling (FSM) is one of the most prominent system modeling tools in analyzing the data...
Fuzzistics was introduced by Mendel in 2003. It is associated with the inverse problem of mapping wo...
It is known that processing of data under general type-1 fuzzy uncertainty can be reduced to the sim...
It is known that processing of data under general type-1 fuzzy uncertainty can be reduced to the sim...
In a 2003 IEEE-FUZZ Conference paper, Mendel proved that to use a type-1 fuzzy set model for a word ...
AbstractIt is known that processing of data under general type-1 fuzzy uncertainty can be reduced to...
Type reduction (TR) is one of the key components of interval type-2 fuzzy logic systems (IT2FLSs). M...
One of the most popular interval type-2 defuzzification methods is the Karnik-Mendel (KM) algorithm....
Real world applications are characterized by high levels of linguistic and numerical uncertainties. ...
Abstract—Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic ...
In 1996, Zadeh coined Computing With Words (CWWs) to be a methodology in which words are used instea...
Real world environments are characterized by high levels of linguistic and numerical uncertainties. ...
Interval Type-2 fuzzy systems allow the possibility of considering uncertainty in models based on fu...
Whereas type-1 and type-2 membership functions (MFs) are the core of any fuzzy logic system, there a...
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...
Fuzzistics was introduced by Mendel in 2003. It is associated with the inverse problem of mapping wo...
It is known that processing of data under general type-1 fuzzy uncertainty can be reduced to the sim...
It is known that processing of data under general type-1 fuzzy uncertainty can be reduced to the sim...
In a 2003 IEEE-FUZZ Conference paper, Mendel proved that to use a type-1 fuzzy set model for a word ...
AbstractIt is known that processing of data under general type-1 fuzzy uncertainty can be reduced to...
Type reduction (TR) is one of the key components of interval type-2 fuzzy logic systems (IT2FLSs). M...
One of the most popular interval type-2 defuzzification methods is the Karnik-Mendel (KM) algorithm....
Real world applications are characterized by high levels of linguistic and numerical uncertainties. ...
Abstract—Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic ...
In 1996, Zadeh coined Computing With Words (CWWs) to be a methodology in which words are used instea...
Real world environments are characterized by high levels of linguistic and numerical uncertainties. ...
Interval Type-2 fuzzy systems allow the possibility of considering uncertainty in models based on fu...
Whereas type-1 and type-2 membership functions (MFs) are the core of any fuzzy logic system, there a...
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...
Fuzzistics was introduced by Mendel in 2003. It is associated with the inverse problem of mapping wo...
It is known that processing of data under general type-1 fuzzy uncertainty can be reduced to the sim...