| Literature DB >> 12816571 |
S Sathiya Keerthi1, Chih-Jen Lin.
Abstract
Support vector machines (SVMs) with the gaussian (RBF) kernel have been popular for practical use. Model selection in this class of SVMs involves two hyperparameters: the penalty parameter C and the kernel width sigma. This letter analyzes the behavior of the SVM classifier when these hyperparameters take very small or very large values. Our results help in understanding the hyperparameter space that leads to an efficient heuristic method of searching for hyperparameter values with small generalization errors. The analysis also indicates that if complete model selection using the gaussian kernel has been conducted, there is no need to consider linear SVM.Mesh:
Year: 2003 PMID: 12816571 DOI: 10.1162/089976603321891855
Source DB: PubMed Journal: Neural Comput ISSN: 0899-7667 Impact factor: 2.026