A Soft Interval Based Decision Making Method and Its Computer Application

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Gözde Yaylalı, N. Polat, B. Tanay
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引用次数: 1

Abstract

Abstract In today’s society, decision making is becoming more important and complicated with increasing and complex data. Decision making by using soft set theory, herein, we firstly report the comparison of soft intervals (SI) as the generalization of interval soft sets (ISS). The results showed that SIs are more effective and more general than the ISSs, for solving decision making problems due to allowing the ranking of parameters. Tabular form of SIs were used to construct a mathematical algorithm to make a decision for problems that involves uncertainties. Since these kinds of problems have huge data, constructing new and effective methods solving these problems and transforming them into the machine learning methods is very important. An important advance of our presented method is being a more general method than the Decision-Making methods based on special situations of soft set theory. The presented method in this study can be used for all of them, while the others can only work in special cases. The structures obtained from the results of soft intervals were subjected to test with examples. The designed algorithm was written in recently used functional programing language C# and applied to the problems that have been published in earlier studies. This is a pioneering study, where this type of mathematical algorithm was converted into a code and applied successfully.
一种基于软区间的决策方法及其计算机应用
在当今社会,随着数据的日益增多和复杂,决策变得越来越重要和复杂。利用软集理论进行决策,本文首先将软区间(SI)作为区间软集(ISS)的推广进行了比较。结果表明,由于允许对参数进行排序,SIs在解决决策问题方面比iss更有效、更通用。采用表格形式的si构建了一种数学算法,对涉及不确定性的问题进行决策。由于这类问题具有巨大的数据量,因此构建新的、有效的方法来解决这些问题并将其转化为机器学习方法是非常重要的。该方法的一个重要进步是它比基于软集理论的特殊情况的决策方法具有更普遍的意义。本研究中提出的方法可以用于所有这些,而其他方法只能在特殊情况下起作用。根据软段计算结果得到的结构进行了实例试验。所设计的算法是用最近使用的函数式编程语言c#编写的,并应用于早期研究中发表的问题。这是一项开创性的研究,这种数学算法被转换成代码并成功应用。
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来源期刊
Foundations of Computing and Decision Sciences
Foundations of Computing and Decision Sciences COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
2.20
自引率
9.10%
发文量
16
审稿时长
29 weeks
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