Landmark based Outliers Detection in Pervasive Applications

Kostas Kolomvatsos, C. Anagnostopoulos
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引用次数: 2

Abstract

The combination of the Internet of Things and the Edge Computing gives many opportunities to support innovative applications close to end users. Numerous devices present in both infrastructures can collect data upon which various processing activities can be performed. However, the quality of the outcomes may be jeopardized by the presence of outliers. In this paper, we argue on a novel model for outliers detection by elaborating on a ‘soft’ approach. Our mechanism is built upon the concepts of candidate and confirmed outliers. Any data object that deviates from the population is confirmed as an outlier only after the study of its sequence of magnitude values as new data are incorporated into our decision making model. We adopt the combination of a sliding with a landmark window model when a candidate outlier is detected to expand the sequence of data objects taken into consideration. The proposed model is fast and efficient as exposed by our experimental evaluation while a comparative assessment reveals its pros and cons.
普适应用中基于地标的离群点检测
物联网和边缘计算的结合为支持接近最终用户的创新应用提供了许多机会。这两个基础设施中存在的许多设备可以收集数据,并在其上执行各种处理活动。然而,异常值的存在可能会损害结果的质量。在本文中,我们通过阐述一种“软”方法来论证一种新的异常值检测模型。我们的机制建立在候选异常值和确认异常值的概念之上。当新数据被纳入我们的决策模型时,只有在研究了其数量级序列后,才确认任何偏离总体的数据对象为离群值。当检测到候选离群点时,我们采用滑动与地标窗口模型相结合的方法来扩展考虑的数据对象序列。实验结果表明,该模型具有快速、高效的特点,对比分析表明了该模型的优缺点。
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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