Constant False Alarm Rate for Online one Class Svm Learning

Yongjian Xue, P. Beauseroy
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引用次数: 1

Abstract

Many one class SVM applications require online learning technique when time series data are encountered. Most of the existing methods for online SVM learning are based on C SVM without adapting the constraint parameter dynamically as the number of training samples increases. In such case the false alarm rate decreases while the miss alarm rate increases gradually for one class SVM. In most applications we prefer a relatively stable performance, especially the false alarm rate. In order to solve that problem, we propose an online version of v-OeSVM. Experiments on toy and real datasets show that v-OeSVM is a good mean to target a given false alarm rate while the AUC increases slowly as the number of new samples increases.
在线一类Svm学习的恒定虚警率
许多单类支持向量机应用在遇到时间序列数据时都需要在线学习技术。现有的支持向量机在线学习方法大多是基于C支持向量机,不能随着训练样本数量的增加而动态调整约束参数。在这种情况下,一类支持向量机的虚警率逐渐降低,漏警率逐渐增加。在大多数应用中,我们更喜欢相对稳定的性能,尤其是虚警率。为了解决这个问题,我们提出了一个在线版本的v-OeSVM。在玩具和真实数据集上的实验表明,当AUC随着新样本数量的增加而缓慢增加时,v-OeSVM是针对给定虚警率的一个很好的平均值。
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