wanghongjun
Research Associate
Supervisor of Master's Candidates
- Master Tutor
- Education Level:PhD graduate
- Degree:Doctor of engineering
- Business Address:犀浦3号教学楼31529
- Professional Title:Research Associate
- Alma Mater:四川大学
- Supervisor of Master's Candidates
- School/Department:计算机与人工智能学院
- Discipline:Electronic Information
Software Engineering
Computer Application Technology
Contact Information
- PostalAddress:
- Email:
- Paper Publications
Hierarchical cluster ensemble model based on knowledge granulation
- Impact Factor:8.139
- DOI number:10.1016/j.knosys.2015.10.006
- Affiliation of Author(s):西南交通大学
- Journal:KNOWLEDGE-BASED SYSTEMS
- Place of Publication:NETHERLANDS
- Key Words:Cluster ensemble Granular computing Rough sets
- Abstract:Cluster ensemble has been shown to be very effective in unsupervised classification learning by generating a large pool of different clustering solutions and then combining them into a final decision. However, the task of it becomes more difficult due to the inherent complexities among base cluster results, such as uncertainty, vagueness and overlapping. Granular computing is one of the fastest growing information-processing paradigms in the domain of computational intelligence and human-centric systems. As the core part of granular computing, the rough set theory dealing with inexact, uncertain, or vague information, has been widely applied in machine learning and knowledge discovery related areas in recent years. From these perspectives, in this paper, a hierarchical cluster ensemble model based on knowledge granulation is proposed with the attempt to provide a new way to deal with the cluster ensemble problem together with ensemble learning application of the knowledge granulation. A novel rough distance is introduced to measure the dissimilarity between base partitions and the notion of knowledge granulation is improved to measure the agglomeration degree of a given granule. Furthermore, a novel objective function for cluster ensembles is defined and the corresponding inferences are made. A hierarchical cluster ensemble algorithm based on knowledge granulation is designed. Experimental results on real-world data sets demonstrate the effectiveness for better cluster ensemble of the proposed method.
- Co-author:Hongjun Wang, Hamido Fujita
- First Author:Jie Hu
- Indexed by:Academic papers
- Correspondence Author:Tianrui Li
- Document Code:20155101701533
- Discipline:Engineering
- First-Level Discipline:Computer Science and Technology
- Volume:Volume 91
- Issue:January 2016
- Page Number:Pages 179-188
- ISSN No.:0950-7051
- Translation or Not:no
- Date of Publication:2015-10-16