chenjunying
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- Associate Professor
- Supervisor of Master's Candidates
- Name (Pinyin):chenjunying
- School/Department:信息与控制工程学院
- Education Level:Postgraduate (Doctoral)
- Degree:Doctoral degree
- Professional Title:Associate Professor
- Status:Employed
- Alma Mater:西安交通大学
- Discipline:Computer Science and Technology
Other Contact Information
No content
- Paper Publications
Designing RBF Neural Networks with Weighted Mean Subtractive Clustering Algorithms
Release time:2024-10-22 Hits:
- Affiliation of Author(s):信息与控制工程学院
- Journal:2011 Seventh International Conference on Natural Computation
- Key Words:中文关键字:RBF神经网络;减聚类;聚类中心,英文关键字:RBF Network; subtractive clustering;cluster center
- Abstract:Abstract—In this paper, weighted mean subtractive clustering algorithms are proposed to find cluster centers of the dataset. Then the found cluster centers act as the centers of radial basis functions. In weighted mean subtractive clustering algorithms, subtractive clustering is used to find center prototypes and then weighted mean methods are used to create new centers. Three weighted mean methods are tried to create more effective centers. Comparative experiments were executed between subtractive clustering and three weighted mean subtractive clustering algorithms on five benchmark datasets. Next, the performance of RBF neural networks set with the proposed algorithms was studied. The experimental results suggest that all three weighted mean subtractive clustering algorithms can find more accurate centers and can be successfully applied to design RBF neural networks. The RBF neural networks determined by weighted mean subtractive clustering algorithms have rather simpler network architecture but with slightly lower classification accuracy than ones determined by subtractive clustering algorithm.
- Note:陈俊英
- Co-author:ZheLi
- First Author:chenjunying
- Indexed by:Journal paper
- Volume:卷:1
- Issue:期:
- Page Number:页:527-531
- Translation or Not:no
- Date of Publication:2011-07-01
