4.6 Article

Granularity and Entropy of Intuitionistic Fuzzy Information and Their Applications

期刊

IEEE TRANSACTIONS ON CYBERNETICS
卷 52, 期 1, 页码 192-204

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2020.2973379

关键词

Entropy; Information systems; Information entropy; Uncertainty; Measurement uncertainty; Data mining; Sea measurements; Attribute reduction; granular structure; granularity; information entropy; intuitionistic fuzzy (IF) relation; uncertainty measure

资金

  1. National Natural Science Foundation of China [61602415, 61976194, 61573321, 41631179, 11871259, 41701447]
  2. Natural Science Foundation of Zhejiang Province [LY18F030017]
  3. Natural Science Foundation of Fujian Province [2019J01748]

向作者/读者索取更多资源

This article examines the application of granular structures of intuitionistic fuzzy information in data mining and information processing. It defines partial-order relations at different hierarchical levels to reveal the granularity of the structures, characterizes the granularity invariance between different structures using relational mappings, and generalizes Shannon's entropies to IF entropies. The significance of intuitionistic attributes using the information measures is introduced, and an information-preserving algorithm for data reduction of IF information systems is constructed. Numerical experiments confirm the performance of the proposed technique by inducing substantial IF relations from public datasets considering the similarity/diversity between samples from the same/different classes.
A granular structure of intuitionistic fuzzy (IF) information presents simultaneously the similarity and diversity of samples. However, this structural representation has rarely displayed its technical capability in data mining and information processing due to the lack of suitable constructive methods and semantic interpretation for IF information with regard to real data. To pursue better performance of the IF-based technique in real-world data mining, in this article, we examine information granularity, information entropy of IF granular structures, and their applications to data reduction of IF information systems. First, several types of partial-order relations at different hierarchical levels are defined to reveal the granularity of IF granular structures. Second, the granularity invariance between different IF granular structures is characterized by using relational mappings. Third, Shannon's entropies are generalized to IF entropies and their relationships with the partial-order relations are addressed. Based on the theoretical analysis above, the significance of intuitionistic attributes using the information measures is then introduced and the information-preserving algorithm for data reduction of IF information systems is constructed. Finally, by inducing substantial IF relations from public datasets that take both the similarity/diversity between the samples from the same/different classes into account, a collection of numerical experiments is conducted to confirm the performance of the proposed technique.

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