基于非精确全局拟牛顿策略的LP-SVR模型选择

P. Rivas-Perea, Juan Cota-Ruiz, J. Venzor, D. G. Chaparro, J. Rosiles
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引用次数: 6

摘要

本文研究了基于线性规划的回归支持向量机的模型选择问题。我们提出了一种基于准牛顿方法的广义方法,该方法使用了全球化策略和一阶信息的不精确计算。我们探讨了两类、多类和回归问题的情况。在标准数据集之间的仿真结果表明,该算法在测量残差统计特性时具有不显著的可变性。
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LP-SVR Model Selection Using an Inexact Globalized Quasi-Newton Strategy
In this paper we study the problem of model selection for a linear programming-based support vector machine for regression. We propose generalized method that is based on a quasi-Newton method that uses a globalization strategy and an inexact computation of first order information. We explore the case of two-class, multi-class, and regression problems. Simulation results among standard datasets suggest that the algorithm achieves insignificant variability when measuring residual statistical properties.
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