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Non-parametric sequence-based learning approach for outlier detection in IoT

机译:基于非参数序列的学习方法在物联网中的异常检测

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摘要

Although study on outlier detection techniques has long been an area of much research, few of those works relate to an Internet of Things (IoT) environment. In the last few years, with the advent of IoT and its numerous smart objects, data generated from sensors have increased exponentially. Since on the basis of these data many critical decisions are taken, it is therefore necessary to absolutely ensure its accuracy, correctness and integrity before any processing starts. Most algorithms in the past assumes outliers to be always an Error, that is caused by a malfunctioning sensor. However, this is not always true because an outlier could also be an important event that should not be neglected. This stresses the need to devise algorithms that is suited for an IoT environment which considers both Error, that is a result of faulty sensors or an Event, which is an indication of an abnormal phenomenon. This paper proposes a sequence based learning approach for outlier detection that works for both Error and Event. Simulations are performed on few benchmark datasets, a medical dataset and a real world dataset obtained through an experimental test bed. The results reveal exceptionally high accuracies with up to 99.65% for Error detection and 98.53% for Event detection.
机译:尽管离群检测技术的研究长期以来一直是很多研究的领域,但这些工作中很少涉及物联网(IoT)环境。在过去的几年中,随着物联网及其众多智能对象的问世,从传感器生成的数据呈指数级增长。由于基于这些数据做出了许多关键决定,因此有必要在开始任何处理之前绝对确保其准确性,正确性和完整性。过去,大多数算法都认为异常值始终是错误,这是由传感器故障引起的。但是,这并不总是正确的,因为异常值也可能是不容忽视的重要事件。这就强调了需要设计一种适用于IoT环境的算法,该算法同时考虑错误(这是传感器故障的结果)或事件(这是异常现象的指示)的结果。本文提出了一种基于序列的异常值检测学习方法,该方法适用于错误和事件。通过实验测试台获得的一些基准数据集,医学数据集和现实数据集都可以进行模拟。结果显示出极高的准确性,错误检测高达99.65%,事件检测高达98.53%。

著录项

  • 来源
    《Future generation computer systems》 |2018年第5期|412-421|共10页
  • 作者单位

    Department of Information Technology, Indian Institute of Engineering Science and Technology;

    Department of Information Technology, Indian Institute of Engineering Science and Technology;

    Department of Information Technology, Indian Institute of Engineering Science and Technology;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Outlier; Event; Error; IoT; Sequence;

    机译:离群值;事件;错误;物联网;序列;

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