Dual-MGAN: An Efficient Approach for Semi-supervised Outlier Detection with Few Identified Anomalies

Zhe Li, Chunhua Sun, Chunli Liu, Xiayu Chen, Meng Wang, Yezheng Liu
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引用次数: 2

Abstract

Outlier detection is an important task in data mining, and many technologies for it have been explored in various applications. However, owing to the default assumption that outliers are not concentrated, unsupervised outlier detection may not correctly identify group anomalies with higher levels of density. Although high detection rates and optimal parameters can usually be achieved by using supervised outlier detection, obtaining a sufficient number of correct labels is a time-consuming task. To solve these problems, we focus on semi-supervised outlier detection with few identified anomalies and a large amount of unlabeled data. The task of semi-supervised outlier detection is first decomposed into the detection of discrete anomalies and that of partially identified group anomalies, and a distribution construction sub-module and a data augmentation sub-module are then proposed to identify them, respectively. In this way, the dual multiple generative adversarial networks (Dual-MGAN) that combine the two sub-modules can identify discrete as well as partially identified group anomalies. In addition, in view of the difficulty of determining the stop node of training, two evaluation indicators are introduced to evaluate the training status of the sub-GANs. Extensive experiments on synthetic and real-world data show that the proposed Dual-MGAN can significantly improve the accuracy of outlier detection, and the proposed evaluation indicators can reflect the training status of the sub-GANs.
双mgan:一种有效的半监督异常点检测方法
异常点检测是数据挖掘中的一项重要任务,针对异常点检测的技术已经在各种应用中得到了探索。然而,由于默认假设异常值不集中,无监督异常值检测可能无法正确识别密度较高的群体异常。虽然使用监督离群值检测通常可以实现高检测率和最佳参数,但获得足够数量的正确标签是一项耗时的任务。为了解决这些问题,我们将重点放在半监督异常点检测上,该检测具有少量可识别的异常和大量未标记的数据。首先将半监督离群点检测任务分解为离散异常检测和部分识别的群异常检测,并分别提出了分布构建子模块和数据增强子模块对其进行识别。通过这种方式,结合两个子模块的双多生成对抗网络(dual - mgan)可以识别离散和部分识别的群体异常。此外,针对难以确定训练停止节点的问题,引入两个评价指标对子gan的训练状态进行评价。在合成数据和真实数据上进行的大量实验表明,本文提出的Dual-MGAN能够显著提高离群点检测的准确性,所提出的评价指标能够反映子gan的训练状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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