基于类不平衡学习的在线异常检测

Chandresh Kumar Maurya, Durga Toshniwal, G. V. Venkoparao
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引用次数: 14

摘要

异常检测在许多现实应用中是一项重要的任务,如欺诈检测、可疑活动检测、医疗监控等。在本文中,我们从在线学习环境中监督学习的角度来解决这个问题。我们在在线学习框架中最大化了班失衡学习的Gmean度量。具体来说,我们证明最大化Gmean等同于最小化凸代理损失函数,并在此基础上提出了一种新的异常检测在线学习算法。然后,我们通过大量的实验表明,所提出的算法在求和度量方面的性能与最近提出的成本敏感在线分类(CSOC)算法一样好,用于在各种基准数据集上进行类不平衡学习,同时保持运行时间接近感知算法。我们的另一个结论是,其他有竞争力的在线算法在不同规模的数据集上表现不一致。这显示了我们提出的方法的潜在适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online anomaly detection via class-imbalance learning
Anomaly detection is an important task in many real world applications such as fraud detection, suspicious activity detection, health care monitoring etc. In this paper, we tackle this problem from supervised learning perspective in online learning setting. We maximize well known Gmean metric for class-imbalance learning in online learning framework. Specifically, we show that maximizing Gmean is equivalent to minimizing a convex surrogate loss function and based on that we propose novel online learning algorithm for anomaly detection. We then show, by extensive experiments, that the performance of the proposed algorithm with respect to sum metric is as good as a recently proposed Cost-Sensitive Online Classification(CSOC) algorithm for class-imbalance learning over various benchmarked data sets while keeping running time close to the perception algorithm. Our another conclusion is that other competitive online algorithms do not perform consistently over data sets of varying size. This shows the potential applicability of our proposed approach.
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