加入收藏 | 设为首页 | 会员中心 | 我要投稿 安卓应用网 (https://www.0791zz.com/)- 科技、建站、经验、云计算、5G、大数据,站长网!
当前位置: 首页 > 综合聚焦 > 程序设计 > 正文

SVM聚合智能

发布时间:2020-05-23 12:51:43 所属栏目:程序设计 来源:互联网
导读:SVM Aggregating Intelligence Description: SVM Aggregating Intelligence is a set of methodologies and approaches to collect computing intellect of multiple SVMs through construction of SVM based multi-

SVM Aggregating Intelligence

Description:

SVM Aggregating Intelligence is a set of methodologies and approaches to collect computing intellect of multiple SVMs through construction of SVM based multi-core complex system to which single SVM methodologies and approaches are ineffective or infeasible. In this field,we developed early several SVM modular aggregations,such as random SVM mixture expert system,SVM Ensemble; ordered SVM aggregation system,SVM Classification Trees (SVMT); SVMT association rule mining system rSVMT,and personalized transductive learning SVMT,ptSVMT.

Figure:

Related articles:

  • S. Pang,D. Kim and S.Y. Bang,"Face membership authentication using SVM classification tree generated by membership-based LLE data partition," IEEE Transactions on Neural Networks,vol. 16,no. 2,pp. 436 -446,2005.|PDF|Bibtxt|
  • S. Pang,"Constructing SVM Multiple Tree for Face Membership Authentication," Biometric Authentication,vol. 3072,pp. 1-13,Springer Berlin / Heidelberg,2004.|PDF|Bibtxt|
  • S. Pang,"Membership authentication in the dynamic group by face classification using SVM ensemble," Pattern Recognition Letters,vol. 24,no. 1-3,pp. 215 - 225,2003.|PDF|Bibtxt|
  • H. C. Kim,S. Pang,H. M. Je,D. Kim and S. Y. Bang,"Constructing support vector machine ensemble," Pattern Recognition,vol. 36,no. 12,pp. 2757 - 2767,2003.|PDF|Bibtxt|
  • S. Pang,T. Ban,Y. Kadobayashi and N. Kasabov,"Personalized mode transductive spanning SVM classification tree," Information Sciences,vol. 181,no. 11,pp. 2071 - 2085,2011.|PDF|Bibtxt|
  • S. Pang and N. Kasabov,"Encoding and decoding the knowledge of association rules over SVM classification trees," Knowledge and Information Systems,vol. 19,no. 1,pp. 79-105,2009.|PDF|Bibtxt|
来源:http://www.dmli.info/index.php/svm-aggregating-intelligence.html

(编辑:安卓应用网)

【声明】本站内容均来自网络,其相关言论仅代表作者个人观点,不代表本站立场。若无意侵犯到您的权利,请及时与联系站长删除相关内容!

    推荐文章
      热点阅读