A rapid anomaly detection technique for big data curation

Korn Poonsirivong, C. Jittawiriyanukoon
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引用次数: 2

Abstract

Anomaly detection (outlier) using simulation helps us analyze the anomaly instances from big data source. As the hasty explosion of today's data stream, outlier detection technique will be an analytical tool to be employed for evaluating massive unstructured datasets. In order to speed-up the processing time to handle enormous datasets, this research will conduct experiments of advanced distant-based outlier detection algorithms to investigate the most effective algorithms using MOA. The algorithms used in this study are Continuous Outlie Detection (COD), Micro-Cluster based COD or MCOD, and STream OutlierR Miner (STORM). The results demonstrate MCOD algorithm can outperform other two algorithms in terms of processing time and accurate anomalies.
面向大数据管理的快速异常检测技术
利用仿真方法进行异常检测(outlier),有助于我们从大数据源中分析异常实例。随着当今数据流的快速爆炸,异常值检测技术将成为评估大量非结构化数据集的一种分析工具。为了加快处理庞大数据集的处理时间,本研究将对先进的基于距离的离群点检测算法进行实验,探索利用MOA最有效的算法。本研究中使用的算法是连续离群检测(COD)、基于微集群的COD或MCOD和STream OutlierR Miner (STORM)。结果表明,MCOD算法在处理时间和异常精度方面优于其他两种算法。
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