首页 | 本学科首页   官方微博 | 高级检索  
     


Combining Discriminant Models with New Multi-Class SVMs
Authors:Yann Guermeur
Affiliation:(1) LORIA, Campus Scientifique, Vandœvre-lès-Nancy, France, FR
Abstract:The idea of performing model combination, instead of model selection, has a long theoretical background in statistics. However, making use of theoretical results is ordinarily subject to the satisfaction of strong hypotheses (weak error correlation, availability of large training sets, possibility to rerun the training procedure an arbitrary number of times, etc.). In contrast, the practitioner is frequently faced with the problem of combining a given set of pre-trained classifiers, with highly correlated errors, using only a small training sample. Overfitting is then the main risk, which cannot be overcome but with a strict complexity control of the combiner selected. This suggests that SVMs should be well suited for these difficult situations. Investigating this idea, we introduce a family of multi-class SVMs and assess them as ensemble methods on a real-world problem. This task, protein secondary structure prediction, is an open problem in biocomputing for which model combination appears to be an issue of central importance. Experimental evidence highlights the gain in quality resulting from combining some of the most widely used prediction methods with our SVMs rather than with the ensemble methods traditionally used in the field. The gain increases when the outputs of the combiners are post-processed with a DP algorithm. Received: 15 November 2000, Received in revised form: 26 October 2001, Accepted: 13 December 2001
Keywords:: Classifier fusion   Generalisation performance   Hierarchical sequence processing systems   Protein secondary structure prediction   Statistical learning theory   Support Vector Machines
本文献已被 SpringerLink 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号