Application of Fuzzy Soft Set in Selection Decision Making Problem

**Citation**

Rajesh Kumar Pal "Application of Fuzzy Soft Set in Selection Decision Making Problem", International Journal of Engineering Trends and Technology (IJETT), V42(7),370-374 December 2016. ISSN:2231-5381. www.ijettjournal.org. published by seventh sense research group

**Abstract**

In our daily life we often face some
problems in which the right decision making is
highly essential. But in most of the cases we
become confused about the right solution. To
obtain the best feasible solution of these problems
we have to consider various parameters relating to
the solution. For this we can use the best
mathematical tool called Fuzzy soft set theory. In
this paper we select a burning problem for the
parents and successfully applied the fs-aggregation
algorithm in decision making for selecting a
suitable bride by the family.

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**Keywords**

—Fuzzy set, Fuzzy Soft set, fs-aggregation.