English

Soft Approximations and uni-int Decision Making

Artificial Intelligence 2016-11-25 v2

Abstract

Notions of core, support and inversion of a soft set have been defined and studied. Soft approximations are soft sets developed through core and support, and are used for granulating the soft space. Membership structure of a soft set has been probed in and many interesting properties presented. The mathematical apparatus developed so far in this paper yields a detailed analysis of two works viz. [N. Cagman, S. Enginoglu, Soft set theory and uni-int decision making, European Jr. of Operational Research (article in press, available online 12 May 2010)] and [N. Cagman, S. Enginoglu, Soft matrix theory and its decision making, Computers and Mathematics with Applications 59 (2010) 3308 - 3314.]. We prove (Theorem 8.1) that uni-int method of Cagman is equivalent to a core-support expression which is computationally far less expansive than uni-int. This also highlights some shortcomings in Cagman's uni-int method and thus motivates us to improve the method. We first suggest an improvement in uni-int method and then present a new conjecture to solve the optimum choice problem given by Cagman and Enginoglu. Our Example 8.6 presents a case where the optimum choice is intuitively clear yet both uni-int methods (Cagman's and our improved one) give wrong answer but the new conjecture solves the problem correctly.

Keywords

Cite

@article{arxiv.1006.5511,
  title  = {Soft Approximations and uni-int Decision Making},
  author = {Athar Kharal},
  journal= {arXiv preprint arXiv:1006.5511},
  year   = {2016}
}

Comments

This paper has been withdrawn by the author due to further expansion of this work. Work is also submitted to a peer reviewed journal and is expected to be published very soon

R2 v1 2026-06-21T15:42:11.999Z