Multivariate convex support vector regression with semidefinite programming

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摘要

As one of important nonparametric regression method, support vector regression can achieve nonlinear capability by kernel trick. This paper discusses multivariate support vector regression when its regression function is restricted to be convex. This paper approximates this convex shape restriction with a series of linear matrix inequality constraints and transforms its training to a semidefinite programming problem, which is computationally tractable. Extensions to multivariate concave case, ℓ2-norm Regularization, ℓ1 and ℓ2-norm loss functions, are also studied in this paper. Experimental results on both toy data sets and a real data set clearly show that, by exploiting this prior shape knowledge, this method can achieve better performance than the classical support vector regression.

论文关键词:Support vector regression,Shape-restriction,Convexity,Semidefinite programming,Linear matrix inequality constraints

论文评审过程:Received 25 August 2011, Revised 21 November 2011, Accepted 19 December 2011, Available online 27 December 2011.

论文官网地址:https://doi.org/10.1016/j.knosys.2011.12.010