Relation “Greater than or Equal to” between Ordered Fuzzy Numbers
Abstract
:1. Introduction
2. Imprecise Quantities—Considered Models
2.1. Fuzzy Numbers—Some Basic Notions
2.2. Ordered Fuzzy Numbers—Some Basic Facts
- Any discussion about the ordering of “oriented fuzzy numbers” is clearer than a discussion of ordering of “ordered fuzzy numbers”.
- Professor Kosinski’s mother language is Polish. In Polish OFNs is called “skierowana liczba rozmyta”. This term was proposed by Professor Kosiński. Against, the quoted Polish term is translated into English as “oriented fuzzy number” or “directed fuzzy number”. Moreover, the English term “ordered fuzzy number” is translated into Polish as “uporządkowana liczba rozmyta”. All this allows us to state that the meanings of the Polish term “skierowana liczba rozmyta” and the English term “ordered fuzzy number” are different.
2.3. Ordered Fuzzy Numbers vs. Fuzzy Numbers
- additive semigroup and additive semigroup cannot be considered as homomorphic algebraic structures;
- any theorems on FNs cannot automatically extended to the case of OFNs.
3. Relation “Greater than or Equal to” for Fuzzy Numbers
4. Relation “Greater than or Equal to” for Ordered Fuzzy Numbers
- for any pair the extension principle
- for any pair the sign exchange law
- for any pair the law of subtraction of parties
- if compared OFNs are both positively oriented then the fuzzy preorder depends only on the interaction between the ending function of the first compared OFN and the starting function of the second compared OFN;
- if the first compared OFN is positively oriented and the second compared OFN is negatively oriented then the fuzzy preorder depends only on the interaction between the ending functions of compared OFN;
- if the first compared OFN is negatively oriented and the second compared OFN is positively oriented then the fuzzy preorder depends only on the interaction between the starting functions of compared OFN;
- if compared OFNs are both negatively oriented, then the fuzzy preorder depends only on the interaction between the starting function of the first compared OFN and the ending function of the second compared OFN.
5. Relations “Greater Than” and “Equal to” for Ordered Fuzzy Numbers
6. Financial Effectivity Determined by Imprecise Return—A Numerical Example
- (A)
- We sell the security and for the funds obtained we buy the security ,
- (B)
- We sell the security and for the funds obtained we buy the security .
7. Final Remarks
Funding
Acknowledgments
Conflicts of Interest
References
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Piasecki, K. Relation “Greater than or Equal to” between Ordered Fuzzy Numbers. Appl. Syst. Innov. 2019, 2, 26. https://doi.org/10.3390/asi2030026
Piasecki K. Relation “Greater than or Equal to” between Ordered Fuzzy Numbers. Applied System Innovation. 2019; 2(3):26. https://doi.org/10.3390/asi2030026
Chicago/Turabian StylePiasecki, Krzysztof. 2019. "Relation “Greater than or Equal to” between Ordered Fuzzy Numbers" Applied System Innovation 2, no. 3: 26. https://doi.org/10.3390/asi2030026
APA StylePiasecki, K. (2019). Relation “Greater than or Equal to” between Ordered Fuzzy Numbers. Applied System Innovation, 2(3), 26. https://doi.org/10.3390/asi2030026