4.7 Article

A comparative study of decision implication, concept rule and granular rule

Journal

INFORMATION SCIENCES
Volume 508, Issue -, Pages 33-49

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2019.08.053

Keywords

Formal concept analysis; Decision implication; Decision implication logic; Concept rule; Granular rule; Granular computing

Funding

  1. National Natural Science Foundation of China [61672331, 61972238, 61632011, 61573231, 61432011, 61603229, 61806116, 61603278]
  2. Key Research and Development Programs of Shanxi Province [201803D421024]
  3. Natural Science Foundation of Shanxi Province [201801D221175, 201601D021076]
  4. Scientific and Technological Innovation Programs of Higher Education Institutions in Shanxi (STIP) [201802014]
  5. Cultivate Scientific Research Excellence Programs of Higher Education Institutions in Shanxi (CSREP) [2019SK036]
  6. Graduate Innovation Programs of Shanxi Province [2018BY006]
  7. Training Program for Young Scientific Researchers of Higher Education Institutions in Shanxi

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Decision implication is a basic form of knowledge representation of formal concept analysis in the setting of decision-making. Concept rules are decision implications that reveal the dependencies between condition concepts and decision concepts. Granular rules are concept rules that reveal the dependencies between condition object concepts and decision object concepts. This paper conducts a comparative study of decision implication, concept rule and granular rule. First, we conclude that both concept rules and granular rules are not complete w.r.t. decision implications, and that granular rules are not complete w.r.t. concept rules, implying that there exists information loss when studying decision implications by using only concept rules or granular rules, or when studying concept rules by using only granular rules. Next, with the help of decision implication logic, we identify accurately the information loss in concept rules and granular rules, and explore the underlying reason behind the information loss in concept rules and granular rules. Finally, by using the obtained results, we revisit some work on concept rule and granular rule, make some insightful remarks on the non-redundancy of concept rules and clarify some seemingly misleading statements on the representation of concept rules by granular rules. (C) 2019 Elsevier Inc. All rights reserved.

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