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New similarity measures for single-valued neutrosophic sets with applications in pattern recognition and medical diagnosis problems

机译:具有模式识别与医学诊断问题的单价中性学套装新的相似措施

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The single-valued neutrosophic set (SVNS) is a well-known model for handling uncertain and indeterminate information. Information measures such as distance measures, similarity measures and entropy measures are very useful tools to be used in many applications such as multi-criteria decision making (MCDM), medical diagnosis, pattern recognition and clustering problems. A lot of such information measures have been proposed for the SVNS model. However, many of these measures have inherent problems that prevent them from producing reasonable or consistent results to the decision makers. In this paper, we propose several new distance and similarity measures for the SVNS model. The proposed measures have been verified and proven to comply with the axiomatic definition of the distance and similarity measure for the SVNS model. A detailed and comprehensive comparative analysis between the proposed similarity measures and other well-known existing similarity measures has been done. Based on the comparison results, it is clearly proven that the proposed similarity measures are able to overcome the shortcomings that are inherent in existing similarity measures. Finally, an extensive set of numerical examples, related to pattern recognition and medical diagnosis, is given to demonstrate the practical applicability of the proposed similarity measures. In all numerical examples, it is proven that the proposed similarity measures are able to produce accurate and reasonable results. To further verify the superiority of the suggested similarity measures, the Spearman’s rank correlation coefficient test is performed on the ranking results that were obtained from the numerical examples, and it was again proven that the proposed similarity measures produced the most consistent ranking results compared to other existing similarity measures.
机译:单值的中性学仪(SVN)是用于处理不确定和不确定信息的公知模型。距离措施,相似度测量和熵措施等信息措施是在许多应用中使用的非常有用的工具,例如多标准决策(MCDM),医学诊断,模式识别和聚类问题。已经为SVNS模型提出了许多这样的信息措施。然而,许多这些措施具有固有的问题,防止他们为决策者产生合理或一致的结果。在本文中,我们为SVNS模型提出了几个新的距离和相似度措施。已经验证了拟议的措施并证明符合SVNS模型的距离和相似度量的公理定义。建议的相似度措施和其他众所周知的现有相似性措施之间进行了详细和全面的比较分析。根据比较结果,清楚地证明,建议的相似度措施能够克服现有相似度措施中固有的缺点。最后,提供了一种与模式识别和医学诊断有关的广泛的数值例子,以证明所提出的相似性措施的实际适用性。在所有数值例子中,证明所提出的相似度措施能够产生准确合理的结果。为了进一步验证所提出的相似性措施的优越性,对从数值例子获得的排名结果执行Spearman的秩相关系数测试,并且再次证明所提出的相似度措施与其他相比产生了最符合的排名结果现有的相似措施。

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