ExLibris header image
SFX Logo
Title: A generalized S–K algorithm for learning ν-SVM classifiers
Source:

Pattern Recognition Letters [0167-8655] Tao, Qing yr:2004


Collapse list of basic services Basic
Sorry, no full text available...
Please use the document delivery service (see below)  
Holding information
Holdings in library search engine ALBERT GO
Document delivery
Request document via Library/Bibliothek GO
Users interested in this article also expressed an interest in the following:
1. Hlaváč, V. "An iterative algorithm learning the maximal margin classifier." Pattern recognition 36.9 (2003): 1985-1996. Link to SFX for this item
2. Lopez, J. "An MDM solver for the nearest point problem in Scaled Convex Hulls." The 2010 International Joint Conference on Neural Networks (IJCNN) 2010. 1-8. Link to Full Text for this item Link to SFX for this item
3. Pepe, M S S. "Phases of biomarker development for early detection of cancer." Journal of the National Cancer Institute 93.14 (2001): 1054-61. Link to SFX for this item
4. Baker, Stuart G G. "Evaluating markers for the early detection of cancer: overview of study designs and methods." Clinical trials 3.1 (2006): 43-56. Link to Full Text for this item Link to SFX for this item
5. Ye, F. "A new iterative algorithm training SVM." Optimization methods & software 24.6 (2009): 913-932. Link to SFX for this item
6. Pepe, M S S. "Using a combination of reference tests to assess the accuracy of a new diagnostic test." Statistics in medicine 18.22 (1999): 2987-3003. Link to Full Text for this item Link to SFX for this item
7. Wulfkuhle, Emanuel F D. "Proteomic applications for the early detection of cancer." Nature reviews. Cancer 3.4 (2003): 267-275. Link to Full Text for this item Link to SFX for this item
8. Etzioni, R. "The case for early detection." Nature reviews. Cancer 3.4 (2003): 243-52. Link to Full Text for this item Link to SFX for this item
9. Haynes, R B B. "The architecture of diagnostic research." BMJ (2002): 539-541. Link to SFX for this item
Select All Clear All

Expand list of advanced services Advanced