Multi-level granularity in formal concept analysis

被引:1
作者
Jianjun Qi
Ling Wei
Qing Wan
机构
[1] Xidian University,School of Computer Science and Technology
[2] Northwest University,School of Mathematics
[3] Xi’an Polytechnic University,College of Science
来源
Granular Computing | 2019年 / 4卷
关键词
Concept lattice; Granular computing; Object; Attribute; Granule;
D O I
暂无
中图分类号
学科分类号
摘要
Formal concept analysis is a tool for data analysis and knowledge processing, and granular computing is a methodology for knowledge discovery in database. Applying granular computing into some data analysis theories, such as formal concept analysis, is a new trend in recent years. The multi-level granular analysis is an essential work in formal concept analysis. In order to combine formal concept analysis and granular computing properly, some basic and specific granules in the framework of formal concept analysis are required. By collecting and organizing the existing results in the theory of lattices and formal concept analysis, we firstly extract five types of granules on the basis of concept lattices from different perspectives and levels. They include the granules induced by objects and attributes, respectively, and the granules induced by both objects and attributes simultaneously. Then, we discuss the granules’ relationships and explain their semantics. The main contribution of this study is providing some specific granules, which are practical and can be used conveniently in formal concept analysis.
引用
收藏
页码:351 / 362
页数:11
相关论文
共 146 条
[31]  
Qiu G(2016)Dcc: a framework for dynamic granular clustering Granul Comput 1 1-11
[32]  
Huang B(2013)Formal concept analysis in knowledge processing: A survey on applications Expert Syst Appl 40 6538-6560
[33]  
Li H(2016)The connections between three-way and classical concept lattices Knowl Based Syst 91 143-151
[34]  
Huang C(2010)Mgrs: a multi-granulation rough set Inf Sci 180 949-970
[35]  
Li J(2014)Pessimistic rough set based decisions: a multigranulation fusion strategy Inf Sci 264 196-210
[36]  
Mei C(2014)Relations between granular reduct and dominance reduct in formal contexts Knowl Based Syst 65 1-11
[37]  
Wu WZ(2014)Rule acquisition and complexity reduction in formal decision contexts Int J Approx Reason 55 259-274
[38]  
Kaytoue M(2017)A multiple-valued logic approach for multigranulation rough set model Int J Approx Reason 82 270-284
[39]  
Kuznetsov SO(2017)Concept lattice reduction using different subset of attributes as information granules Granul Comput 2 159-173
[40]  
Napoli A(2017)Concepts reduction in formal concept analysis with fuzzy setting using shannon entropy Int J Mach Learn Cybern 8 179-189