粗糙中性沙普利加权爱因斯坦平均聚合算子及其在多标准决策问题中的应用

Nur Qafareeny Abdul Halim, Noor Azzah Awang, Siti Nurhidayah Yaacob, Hazwani Hashim, Lazim Abdullah
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引用次数: 0

摘要

对聚合算子的研究在各种决策方法中起到了至关重要的作用。聚合算子的主要功能是将多个数字合并为一个值。虽然爱因斯坦算子提供了一种紧凑的符号,并能处理复杂而庞大的数据集,但它们并没有考虑到在确定标准权重时所涉及的交互作用,也没有考虑到不精确和不确定的数据。为了克服这一局限性,本文引入了一种改进的聚合算子--粗糙中性沙普利加权爱因斯坦平均聚合算子。粗糙中性集提供了一种有效管理现实世界场景中常见的模糊性和不确定性的方法,而 Shapley 模糊度量可以帮助我们了解每个场景中不同元素的重要性或价值。该算子将沙普利模糊度量与粗糙中性集下的爱因斯坦算子相结合,是处理不完整、不确定和不一致信息的有效工具。所提出的算子满足基本的代数特性,例如幂等性、有界性和单调性。本文还介绍了一种基于所提算子的决策方法,其属性值来自粗糙中性集。最后,通过一个数值示例说明了所建议的聚合算子的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rough Neutrosophic Shapley Weighted Einstein Averaging Aggregation Operator and its Application in Multi-Criteria Decision-Making Problem
The study of aggregation operators has played a crucial role in various decision-making methods. The primary function of the aggregation operator is to combine multiple numbers into a single value. While Einstein operators offer a compact notation and can handle complex and large datasets, they do not consider the interaction involved in determining the criteria weights or account for imprecise and indeterminate data. To overcome this limitation, this paper introduces an improved aggregation operator, the rough neutrosophic Shapley weighted Einstein averaging aggregation operator. The rough neutrosophic sets offer a method for effectively managing the fuzziness and uncertainty that commonly occur in real-world scenarios and the Shapley fuzzy measure helps us understand the importance or value of different elements in each scenario. This operator combines the Shapley fuzzy measure with Einstein operators under rough neutrosophic sets, which are an effective tool for handling incomplete, indeterminate, and inconsistent information. The proposed operator satisfies essential algebraic properties such as idempotency, boundedness, and monotonicity. This paper also presents a decision-making methodology based on the proposed operator, with attribute values derived from the rough neutrosophic set. Finally, the applicability of the suggested aggregation operator is illustrated with a numerical example.
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CiteScore
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