GAN Augmented Text Anomaly Detection with Sequences of Deep Statistics

Mariem Ben Fadhel, K. Nyarko
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引用次数: 3

Abstract

Anomaly detection is the process of finding data points that deviate from a baseline. In a real-life setting, anomalies are usually unknown or extremely rare. Moreover, the detection must be accomplished in a timely manner or the risk of corrupting the system might grow exponentially. In this work, we propose a two level framework for detecting anomalies in sequences of discrete elements. First, we assess whether we can obtain enough information from the statistics collected from the discriminator’s layers to discriminate between out of distribution and in distribution samples. We then build an unsupervised anomaly detection module based on these statistics. As to augment the data and keep track of classes of known data, we lean toward a semi-supervised adversarial learning applied to discrete elements.
基于深度统计序列的GAN增强文本异常检测
异常检测是发现偏离基线的数据点的过程。在现实生活中,异常通常是未知的或极其罕见的。此外,检测必须及时完成,否则破坏系统的风险可能会呈指数级增长。在这项工作中,我们提出了一个两级框架来检测离散元素序列中的异常。首先,我们评估是否可以从判别器层收集的统计信息中获得足够的信息来区分分布外和分布内样本。然后,我们基于这些统计数据构建了一个无监督异常检测模块。为了增加数据并跟踪已知数据的类别,我们倾向于将半监督对抗性学习应用于离散元素。
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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