Efficient optimization of support vector machine learning parameters for unbalanced datasets
作者:
Highlights:
•
摘要
Support vector machines are powerful kernel methods for classification and regression tasks. If trained optimally, they produce excellent separating hyperplanes. The quality of the training, however, depends not only on the given training data but also on additional learning parameters, which are difficult to adjust, in particular for unbalanced datasets. Traditionally, grid search techniques have been used for determining suitable values for these parameters. In this paper, we propose an automated approach to adjusting the learning parameters using a derivative-free numerical optimizer. To make the optimization process more efficient, a new sensitive quality measure is introduced. Numerical tests with a well-known dataset show that our approach can produce support vector machines that are very well tuned to their classification tasks.
论文关键词:Support vector machine,Parameter tuning,Unbalanced datasets,Derivative-free optimization
论文评审过程:Received 31 May 2005, Revised 6 September 2005, Available online 8 November 2005.
论文官网地址:https://doi.org/10.1016/j.cam.2005.09.009