基于集成机器学习的遥测数据异常检测

Nibras Ahmed Nizar, Krishna Raj P. M., V. Bp
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摘要

本文通过回顾和确定用于异常检测的最佳自动化检测算法和方法,探讨了用于遥测数据集异常检测的无监督机器学习方法。为了确定一种有效的模型来检测遥测数据的异常,以减少响应时间,从而降低风险,避免故障,已经进行了各种研究。传统的异常检测算法难以在整个数据分析任务中识别攻击。机器学习方法,例如用于分组、分类和回归的监督和无监督方法,似乎是分析异常行为的非常有用的工具。这些技术可以识别遥测数据中的任何异常行为,并为实时分析提供研究空间。本研究的主要目的是回答“我们如何改进当前遥测数据集异常检测的机器学习模型?”这个问题。该数据集由五个时间序列数据集组成,代表了我们所关注的数据。五种算法应用于这些数据集,并深入研究。然后,研究了三种无监督异常的定义。
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Anomaly Detection In Telemetry Data Using Ensemble Machine Learning
This paper explores unsupervised machine learning methods for anomaly detection in telemetry datasets by reviewing and identifying best-automated detection algorithms and methodologies for anomaly detection. There have been various research to identify an effective model to detect anomalies for telemetry data to reduce response time so as to mitigate risks and avoid failures. Traditional algorithms for anomaly detection have trouble identifying attacks throughout the data analysis task. Machine learning approaches, such as supervised, and unsupervised methods for grouping, classification, and regression, appear to be very useful tools for analyzing anomalous behavior. These techniques can identify any anomalous behavior in telemetry data and allow room for research into the real-time analysis. The principal aim of this research is to answer the question "How can we improve on the current machine learning models for anomaly detection in telemetry datasets?". The dataset consists of five Time-Series datasets and is representative of the data with which we are concerned. Five algorithms are applied to these datasets and examined in depth. Then, three unsupervised anomaly definitions are examined.
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