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首页> 外文期刊>Journal of computational and theoretical nanoscience >Kernel optimization-based multiclass support vector machine feature selection
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Kernel optimization-based multiclass support vector machine feature selection

机译:基于内核优​​化的多类支持向量机特征选择

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摘要

Support vector machine (SVM) is a popular classification paradigm in machine learning and has achieved great success in real applications. There has been considerable interest in feature selection for SVM, but the previous works are usually for binary classification. This paper considers feature selection in a multiclass classification scenario where the goal is to determine a subset of available features which is most discriminative and informative for all the classes simultaneously. Based on the data distributions of classes in the feature space, this paper first presents a model selection criterion named multiclass kernel polarization (MKP) to evaluate the goodness of a kernel in multiclass classification scenario, and then optimizes the scale factors assigned to each feature in a kernel by maximizing this criterion to identify the more relevant features. Since MKP is differentiable with respect to the scale factors, the gradient-based search techniques can be used to solve this maximizing problem efficiently. Experimental study on some UCI machine learning benchmark examples demonstrates the effectiveness of the proposed approach.
机译:支持向量机(SVM)是机器学习中流行的分类范例,并在实际应用中取得了巨大的成功。对于SVM的特征选择已经引起了极大的兴趣,但是先前的工作通常是针对二进制分类的。本文考虑了在多类分类方案中的特征选择,该方案的目标是确定所有特征同时具有最大判别力和信息性的可用特征子集。基于特征空间中类的数据分布,本文首先提出了一种名为多类核极化(MKP)的模型选择准则,以评估多类分类场景中核的优劣,然后优化分配给每个特征的比例因子。通过最大化该标准来确定更相关的特征来确定内核。由于MKP在比例因子方面是可区分的,因此可以使用基于梯度的搜索技术来有效解决此最大化问题。对一些UCI机器学习基准示例的实验研究证明了该方法的有效性。

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