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A new similarity measure between picture fuzzy sets with applications to pattern recognition and clustering problems

机译:一种新的图像模糊集相似度度量及其在模式识别和聚类问题中的应用

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摘要

In this paper, similarity measures have been discussed which has the potential to discriminate analogous but contrary picture fuzzy sets (PFSs). We have also described their properties along with their implementation in pattern recognition by taking numerical examples. To implement the application of similarity measures in real life problems, we have taken real data from the repository of machine learning. Next, the real data set has been transformed into picture fuzzy (PF)- environment. Thereafter, by using the idea of degree of confidence (DOC), we have compared the proposed measures with existing measures and the potential of proposed measures have been discussed. Furthermore, by extending the idea of maximum spanning tree (MST) and clustering algorithm, a picture fuzzy maximum spanning tree clustering method has been proposed. Although, existing PF-clustering methods can also give reasonable results but proposed method is simple and having less computational cost. Additionally, we have compared the proposed measures with existing PF-similarity measures in terms of linguistic hedges. Proposed measures meet all the conditions as compared to existing measures from linguistic hedges point of view. Thus, comparative results of pattern recognition problems, DOC and linguistic hedges shows the superiority of proposed measures over existing measures.
机译:在本文中,讨论了相似性度量,它有可能区分相似但相反的图片模糊集(PFS)。我们还通过数值示例描述了它们的属性以及它们在模式识别中的实现。为了在现实生活中实现相似性度量的应用,我们从机器学习的存储库中获取了真实数据。接下来,将真实数据集转换为图片模糊(PF)-环境。其后,我们运用置信度的概念,将建议的措施与现有措施进行比较,并讨论建议措施的潜力。此外,通过扩展最大生成树(MST)的思想和聚类算法,提出了一种图片模糊最大生成树聚类方法。虽然现有的PF聚类方法也能得到合理的结果,但所提方法操作简单,计算成本低。此外,我们还在语言对冲方面将建议的措施与现有的PF相似性措施进行了比较。从语言对冲的角度来看,与现有措施相比,拟议的措施满足了所有条件。因此,模式识别问题、DOC和语言对冲的比较结果表明,所提出的措施优于现有措施。

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