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
Markov clustering ensemble
- DOI number:10.1016/j.knosys.2022.109196
- Journal:Knowledge-Based Systems
- Place of Publication:NETHERLANDS
- Key Words:Machine learning; Unsupervised learning; Markov clustering ensemble model; Markov clustering ensemble algorithm
- Abstract:Clustering ensemble is an unsupervised ensemble learning method that is very important in machine learning, since it integrates multiple weak base clustering results to produce a strong consistency result. This paper proposes the Markov clustering ensemble (MCE) model to solve the weak stability and robustness of soft clustering ensemble. First, the base clustering algorithms are regarded as new features of the original datasets. Then, the results of the base clustering algorithms are the values of these features, which can break through the framework of consensus cluster ensemble. Second, as the base clustering results are discrete data, the maximum information coefficient is applied to measure their similarity. Accordingly, a graph-based cluster ensemble model can be constructed with row vectors as vertices and the similarity between row vectors as edges. Then, the Markov process can be applied to infer the graph-based cluster ensemble model; therefore, the MCE algorithm is designed according to the inference. To test the performance of the MCE algorithm, clustering algorithms and clustering ensemble algorithms are used to conduct comparative experiments on ten datasets. The experimental results show that the MCE algorithm outperforms the other algorithms in terms of accuracy and purity.
- Co-author:Tianrui Li
- First Author:Luqing Wang
- Indexed by:SCI
- Correspondence Author:Junwei Luo,Hongjun Wang
- Document Type:J
- Issue:251
- Page Number:109196
- ISSN No.:0950-7051
- Translation or Not:no
- Date of Publication:2022-06-04
- Included Journals:SCI