Generalized Trapezoidal Intuitionistic Fuzzy Soft Sets in Risk Analysis
Tóm tắt
In medical sciences, diagnosis of a disease of a patient needs to be very potent and realizable. In this article we have given a mathematical approach that can help a doctor for making a decision about a patient whether he/she is a diabetic or not. In this regard, firstly we have introduced the notion of generalized trapezoidal intuitionistic fuzzy soft set. Secondly, we have employed a new decision making approach along with an algorithm to solve a generalized trapezoidal intuitionistic fuzzy soft set based decision making problem with linguistic variables intuitively. Then a real life decision making problem regarding the analysis of being a diabetic patient has been illustrated. Moreover, a comparative analysis has also been given to examine the feasibility of our proposed algorithm.
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