A Critical Review of the Applications and AI Techniques for Anomaly Detection

Sidny Chalhoub
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引用次数: 4

Abstract

In the process of analysing data, outlier detection (i.e., anomaly detection or novelty identification) is often misinterpreted to an identification of rare observations, occurrence or an item, which deviates highly from enormous data and never conforms to well- defined ideologies of a normal behaviour. The samples could stimulate more suspicion of being produced from various techniques, or appear unpredictable with the remaining portion of the specific dataset. Anomaly detection draws application in different domains such as neuroscience, statistics, machine vision, medicine, financial fraud, law enforcement and cyber security. The data that has been collected from real-life applications are rapidly increasing in dimension and size. As the aspect of dimensionality keeps increasing, data items become significantly sparse, amounting to an identification of variances becoming problematic. In addition, more conventional approaches for anomaly detection cannot function in a proper manner. In this paper, we have evaluated the applications and methods of anomaly detection.
异常检测应用与人工智能技术综述
在分析数据的过程中,异常点检测(即异常检测或新颖性识别)经常被误解为对罕见观测、事件或项目的识别,这些项目高度偏离大量数据,从不符合正常行为的良好定义。这些样本可能会引起更多的怀疑,怀疑它们是由各种技术产生的,或者对特定数据集的剩余部分似乎是不可预测的。异常检测在神经科学、统计学、机器视觉、医学、金融欺诈、执法和网络安全等不同领域都有应用。从实际应用程序中收集的数据在维度和大小上都在迅速增加。随着维度方面的不断增加,数据项变得非常稀疏,导致方差的识别变得有问题。此外,更传统的异常检测方法无法以适当的方式发挥作用。在本文中,我们评估了异常检测的应用和方法。
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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