Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
386741 | Expert Systems with Applications | 2010 | 7 Pages |
In this paper, the reducing samples strategy instead of classical νν-support vector regression (νν-SVR), viz. single kernel νν-SVR, is utilized to select training samples for admissible functions so as to curtail the computational complexity. The proposed multikernel learning algorithm, namely reducing samples based multikernel semiparametric support vector regression (RS-MSSVR), has an advantage over the single kernel support vector regression (classical εε-SVR) in regression accuracy. Meantime, in comparison with multikernel semiparametric support vector regression (MSSVR), the algorithm is also favorable for computational complexity with the comparable generalization performance. Finally, the efficacy and feasibility of RS-MSSVR are corroborated by experiments on the synthetic and real-world benchmark data sets.