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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Improving classification performance of Support Vector Machine by genetically optimising kernel shape and hyper-parameters
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Improving classification performance of Support Vector Machine by genetically optimising kernel shape and hyper-parameters

机译:通过遗传优化内核形状和超参数来提高支持向量机的分类性能

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Support Vector Machines (SVM s) deliver state-of-the-art performance in real-world applications and are now established as one of the standard tools for machine learning and data mining. A key problem of these methods is how to choose an optimal kernel and how to optimise its parameters. The real-world applications have also emphasised the need to consider a combination of kernels-a multiple kernel-in order to boost the classification accuracy by adapting the kernel to the characteristics of heterogeneous data. This combination could be linear or non-linear, weighted or un-weighted. Several approaches have been already proposed to find a linear weighted kernel combination and to optimise its parameters together with the SVM parameters, but no approach has tried to optimise a non-linear weighted combination. Therefore, our goal is to automatically generate and adapt a kernel combination (linear or non-linear, weighted or un-weighted, according to the data) and to optimise both the kernel parameters and SVM parameters by evolutionary means in a unified framework. We will denote our combination as a kernel of kernels (KoK). Numerical experiments show that the SVM algorithm, involving the evolutionary kernel of kernels (eKoK) we propose, performs better than well-known classic kernels whose parameters were optimised and a state of the art convex linear and an evolutionary linear, respectively, kernel combinations. These results emphasise the fact that the SVM algorithm could require a non-linear weighted combination of kernels.
机译:支持向量机(SVM S)在现实世界应用中提供最先进的性能,现在建立为机器学习和数据挖掘的标准工具之一。这些方法的关键问题是如何选择最佳内核以及如何优化其参数。现实世界的应用还强调需要考虑内核的组合 - 通过将内核调整到异构数据的特征来提高分类准确性。该组合可以是线性的或非线性的,加权或未加权。已经提出了几种方法来查找线性加权核组合,并与SVM参数一起优化其参数,但是没有尝试优化非线性加权组合的方法。因此,我们的目标是根据数据自动生成和调整内核组合(线性或非线性,加权或未加权,并通过统一框架中的进化装置优化内核参数和SVM参数。我们将表示我们作为内核内核(KOK)的组合。数值实验表明,涉及核(Ekok)进化内核的SVM算法,我们提出的,而是比其参数被优化的公知经典内核更好地进行,并且分别是内核组合的凸面凸线和进化线性的状态。这些结果强调了SVM算法可能需要非线性加权组合的核。

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