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首页> 外文期刊>International journal of machine learning and cybernetics >Improved sparse LSSVMS based on the localized generalization error model
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Improved sparse LSSVMS based on the localized generalization error model

机译:基于局部泛化误差模型的改进稀疏LSSVMS

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摘要

The least squares support vector machine (LSSVM) is computationally efficient because it converts the quadratic programming problem in the training of SVM to a linear programming problem. The sparse LSSVM is proposed to promote the predictive speed and generalization capability. In this paper, two sparse LSSVM algorithms: the SMRLSSVM and the RQRLSSVM are proposed based on the Localized Generalization Error of the LSSVM. Experimental results show that the RQRLSSVM yields both better generalization capability and sparseness in comparison to other sparse LSSVM algorithms.
机译:最小二乘支持向量机(LSSVM)具有高效的计算能力,因为它将SVM训练中的二次规划问题转换为线性规划问题。提出了稀疏的LSSVM以提高预测速度和泛化能力。本文基于LSSVM的局部化广义误差,提出了两种稀疏的LSSVM算法:SMRLSSVM和RQRLSSVM。实验结果表明,与其他稀疏LSSVM算法相比,RQRLSSVM具有更好的泛化能力和稀疏性。

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