基于自适应有向无环图的多类增量和递减支持向量机方法

H. Gâlmeanu, Răzvan Andonie
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引用次数: 6

摘要

支持向量机的多类方法是基于二元支持向量机分类器的组合。由于需要考虑大量的二元分类器,对于大型训练集,这种方法的时间开销是众所周知的。在我们的方法中,我们同时使用两种策略来提高时间效率:增量训练和减少训练好的二值支持向量机。我们给出了二值支持向量机在增量训练过程中的精确迁移条件。我们将这些条件重写为正则化参数优化的情况。将所得结果应用于基于自适应有向无环图的多类增量/递减支持向量机。正则化参数是在线优化的,而不是通过对每个正则化参数的所有输入样本重新训练支持向量机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-class Incremental and Decremental SVM Approach Using Adaptive Directed Acyclic Graphs
Multi-class approaches for SVMs are based on composition of binary SVM classifiers. Due to the numerous binary classifiers to be considered, for large training sets, this approach is known to be time expensive. In our approach, we improve time efficiency using concurrently two strategies: incremental training and reduction of trained binary SVMs. We present the exact migration conditions for the binary SVMs during their incremental training. We rewrite these conditions for the case when the regularization parameter is optimized. The obtained results are applied to a multi-class incremental / decremental SVM based on the Adaptive Directed Acyclic Graph. The regularization parameter is optimized on-line, and not by retraining the SVM with all input samples for each value of the regularization parameter.
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