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New Solution Method to Smoothing Support Vector Machine with One Control Parameter Smoothing Function

机译:具有一个控制参数平滑功能的支持向量机平滑的新解决方法

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Support vector machine (SVM) can be seen as, a special binary classification method. The original model is a quadratical programming with linear inequalities constraints. It is a very important issue that how to get the optimal solution of SVM model. In this paper, a new solution method is proposed. The constraints are moved away from the original optimization model by using the approximation solution in the feasible space. One control parameter smoothing function is used to smoothen the objective function of unconstrained model. The smoothing performance is investigated. By theory proof, the proposed unconstrained model has an active performance which can be controlled by one proposed parameter.
机译:支持向量机(SVM)可以看作是一种特殊的二进制分类方法。原模是一种具有线性不等式约束的四重编程。这是一个非常重要的问题,如何获得SVM模型的最佳解决方案。本文提出了一种新的解决方案方法。通过使用可行空间中的近似解,约束将从原始优化模型移开。一个控制参数平滑功能用于平滑无约束模型的目标函数。调查平滑性能。通过理论证据,所提出的无约束模型具有积极的性能,可以由一个提出的参数控制。

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