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Anomaly detection using weak estimators

机译:使用弱估计量进行异常检测

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Anomaly detection involves identifying observations that deviate from the normal behavior of a system. One of the ways to achieve this is by identifying the phenomena that characterize “normal” observations. Subsequently, based on the characteristics of data learned from the “normal” observations, new observations are classified as being either “normal” or not. Most state-of-the-art approaches, especially those which belong to the family parameterized statistical schemes, work under the assumption that the underlying distributions of the observations are stationary. That is, they assume that the distributions that are learned during the training (or learning) phase, though unknown, are not time-varying. They further assume that the same distributions are relevant even as new observations are encountered. Although such a “stationarity” assumption is relevant for many applications, there are some anomaly detection problems where stationarity cannot be assumed. For example, in network monitoring, the patterns which are learned to represent normal behavior may change over time due to several factors such as network infrastructure expansion, new services, growth of user population, etc. Similarly, in meteorology, identifying anomalous temperature patterns involves taking into account seasonal changes of normal observations. Detecting anomalies or outliers under these circumstances introduces several challenges. Indeed, the ability to adapt to changes in non-stationary environments is necessary so that anomalous observations can be identified even with changes in what would otherwise be classified as “normal” behavior. In this paper, we proposed to apply weak estimation theory for anomaly detection in dynamic environments. In particular, we apply this theory to detect anomaly activities in system calls. Our experimental results demonstrate that our proposal is both feasible and effective for t--he detection of such anomalous activities.
机译:异常检测涉及识别偏离系统正常行为的观察结果。实现这一目标的方法之一是通过识别表征“正常”观测的现象。随后,根据从“正常”观察值中学习到的数据的特征,将新观察值分类为“正常”或不“正常”。大多数最新方法,特别是属于家庭参数化统计方案的方法,都是在假设观测值的基本分布是固定的前提下工作的。也就是说,他们假设在训练(或学习)阶段获得的分布虽然未知,但不会随时间变化。他们进一步假设即使遇到新的观察结果,相同的分布也是相关的。尽管这种“平稳性”假设与许多应用相关,但是存在一些无法假定平稳性的异常检测问题。例如,在网络监控中,由于多种因素(例如网络基础架构扩展,新服务,用户数量的增长等),学习到的表示正常行为的模式可能会随时间变化。类似地,在气象学中,识别异常温度模式也涉及考虑到正常观测值的季节性变化。在这种情况下检测异常或异常值会带来一些挑战。确实,必须具有适应非平稳环境中的变化的能力,以便即使在原本被归类为“正常”行为的变化中也可以识别异常观察。在本文中,我们提出将弱估计理论应用于动态环境中的异常检测。特别是,我们将这种理论应用于检测系统调用中的异常活动。我们的实验结果表明,我们的建议对于t- -- 他检测到此类异常活动。

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