Training primal twin support vector regression via unconstrained convex minimization

作者:S. Balasundaram, Yogendra Meena

摘要

In this paper, we propose a new unconstrained twin support vector regression model in the primal space (UPTSVR). With the addition of a regularization term in the formulation of the problem, the structural risk is minimized. The proposed formulation solves two smaller sized unconstrained minimization problems having continues, piece-wise quadratic objective functions by gradient based iterative methods. However, since their objective functions contain the non-smooth ‘plus’ function, two approaches are taken: (i) replace the non-smooth ‘plus’ function with their smooth approximate functions; (ii) apply a generalized derivative of the non-smooth ‘plus’ function. They lead to five algorithms whose pseudo-codes are also given. Experimental results obtained on a number of interesting synthetic and real-world benchmark datasets using these algorithms in comparison with the standard support vector regression (SVR) and twin SVR (TSVR) clearly demonstrates the effectiveness of the proposed method.

论文关键词:Gradient based iterative methods, Smooth approximation, Support vector regression, Twin support vector regression, Unconstrained convex minimization

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10489-015-0731-5