ARTÍCULO
TITULO

On almost ?- statistical convergence of fuzzy numbers - doi: 10.4025/actascitechnol.v36i1.16218

Ayhan Esi    
Mehmet Acikgoz    

Resumen

The purpose of this paper is to introduce the concepts of almost ?-statistical convergence and strongly almost ?- convergence of fuzzy numbers. We obtain some results related to these concepts. It is also shown that almost ?- statistical convergence and strongly almost ?-convergence are equivalent for almost bounded sequences of fuzzy numbers.  

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