Measures of uncertainty for knowledge bases

被引:0
作者
Zhaowen Li
Gangqiang Zhang
Wei-Zhi Wu
Ningxin Xie
机构
[1] Yulin Normal University,Key Laboratory of Complex System Optimization and Big Data Processing in Department of Guangxi Education
[2] Guangxi University for Nationalities,School of Software and Information Security
[3] Zhejiang Ocean University,School of Mathematics, Physics and Information Science
[4] Zhejiang Ocean University,Key Laboratory of Oceanographic Big Data Mining and Application of Zhejiang Province
来源
Knowledge and Information Systems | 2020年 / 62卷
关键词
Rough set theory; Granular computing; Knowledge base; Knowledge granule; Knowledge structure; Dependence; Uncertainty; Measure; Effectiveness;
D O I
暂无
中图分类号
学科分类号
摘要
This paper investigates measures of uncertainty for knowledge bases by using their knowledge structures. Knowledge structures of knowledge bases are first introduced. Then, dependence and independence between knowledge structures of knowledge bases are proposed, which are characterized by inclusion degree. Next, measures of uncertainty for a given knowledge base are studied, and it is proved that the proposed measures are based on the knowledge structure of this knowledge base. Finally, a numerical experiment is conducted to show performance of the proposed measures and effectiveness analysis is done from two aspects of dispersion and correlation in statistics. These results will be significant for understanding the essence of uncertainty for knowledge bases.
引用
收藏
页码:611 / 637
页数:26
相关论文
共 67 条
  • [1] Beaubouef T(1998)Information-theoretic measures of uncertainty for rough sets and rough relational databases Inform Sci 109 185-195
  • [2] Petry FE(2014)Fusion of local normalization and Gabor entropy weighted features for face identification Pattern Recognit 47 568-577
  • [3] Arora G(1998)Uncertainty measures of rough set prediction Artif Intell 106 109-137
  • [4] Cament LA(2016)Environmental conflict analysis using an integrated grey clustering and entropy-weight method: a case study of a mining project in Peru Environ Modell Softw 77 108-121
  • [5] Castillo LE(2015)Incremental learning for v-support vector regression Neural Netw 67 140-150
  • [6] Perez JP(2016)An entropy-based evaluation method for knowledge bases of medical information systems Exp Syst Appl 46 262-273
  • [7] Galdames FJ(2001)Comparative study of alternative types of knowledge reduction in inconsistent systems Int J Intell Syst 16 105-120
  • [8] Perez CA(2016)Relationships between knowledge bases and related results Knowl Inform Syst 49 171-195
  • [9] Düntsch I(2016)Knowledge structures in a knowledge base Exp Syst 33 581-591
  • [10] Gediga G(2011)Knowledge reduction in decision formal contexts Knowl Based Syst 24 709-715