Experimental analysis of support vector machines with different kernels based on non-intrusive monitoring data

T. Onoda, H. Murata, Gunnar Rätsch, K. Muller
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引用次数: 20

Abstract

The estimation of the states of household electric appliances has served as the first application of support vector machines in the power system research field. Thus, it is imperative for power system research field to evaluate the support vector machine on this task from a practical point of view. We use the data proposed in Onoda and Ratsch (2000) for this purpose. We put particular emphasis on comparing different types of support vector machines obtained by choosing different kernels. We report results for polynomial kernels, radial basis function kernels, and sigmoid kernels. In the estimation of the states of household electric appliances, the results for the three different kernels achieved different error rates. We also put particular emphasis on comparing the different capacity of support vector machines obtained by choosing different regularization constants and parameters of kernels. The results show that the choice of regularization constants and parameters of kernels is as important as the choice of kernel functions for real world applications.
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基于非侵入式监测数据的不同核支持向量机实验分析
家用电器的状态估计是支持向量机在电力系统研究领域的第一个应用。因此,从实际应用的角度对支持向量机进行评价是电力系统研究领域的当务之急。为此,我们使用了Onoda和Ratsch(2000)提出的数据。我们特别强调了通过选择不同核得到的不同类型的支持向量机的比较。我们报告了多项式核、径向基函数核和sigmoid核的结果。在家用电器的状态估计中,三种不同的核函数得到的结果错误率不同。我们还重点比较了通过选择不同正则化常数和核参数得到的支持向量机的不同容量。结果表明,在实际应用中,正则化常数和核函数参数的选择与核函数的选择同样重要。
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