4.7 Article

Double-quantitative distance measurement and classification learning based on the tri-level granular structure of neighborhood system

Journal

KNOWLEDGE-BASED SYSTEMS
Volume 217, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.knosys.2021.106799

Keywords

Neighborhood rough sets; Granular computing; Tri-level granular structure; Double quantification; Distance measurement; Machine learning

Funding

  1. National Natural Science Foundation of China [61673285, 61673301, 61976158]
  2. Sichuan Science and Technology Program of China [2021YJ0085, 2019YJ0529]
  3. Joint Research Project of Laurent Mathematics Center of Sichuan Normal University
  4. National-Local Joint Engineering Laboratory of System Credibility Automatic Verification

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This study explores the tri-level granular structure of neighborhood system and introduces the double-quantification technology for distance measurement and classification learning. The new double-quantitative classifier KNGD outperforms existing classifiers in data experiments, showing its effectiveness in knowledge measurement and classification learning.
In terms of neighborhood rough sets, the tri-level granular structure of neighborhood system (carrying the neighborhood granule, swarm, and library) establishes a granular computing mechanism for knowledge-based learning. However, its hierarchical exploration is inadequate, while its measurement can be extended for robust applications. Regarding this tri-level granular structure, the double-quantification technology is novelly introduced to make a thorough investigation, especially on the double-quantitative distance measurement and classification learning. Firstly, the size valuation and logical operation are hierarchically supplemented at higher levels. Secondly, the relative and absolute distances of bottom neighborhood granules are linearly combined to a double-quantitative distance, and all the three types of distances are promoted to both the middle swarm level and the top library level. Finally, the double-quantitative distance powerfully characterizing the difference of neighborhood granules is utilized to generate a double-quantitative classifier KNGD, and relevant data experiments show that this new classifier outperforms or balances two existing classifiers, i.e., the relative classifier KNGR and absolute classifier KNGA. By theory, example, and experiment, this study hierarchically perfects the tri-level granular structure of neighborhood system, and the corresponding double-quantification integration and extension offer the robust knowledge measurement and effective classification learning. (C) 2021 Elsevier B.V. All rights reserved.

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