应对大数据4 vs异常检测

J. Camacho, G. Maciá-Fernández, J. D. Verdejo, P. García-Teodoro
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引用次数: 53

摘要

本文介绍了一个大数据异常检测与取证的框架。该框架解决了大数据4v:多样性、准确性、体积和速度。通过将典型的非结构化数据转换为高维的结构化数据集来处理数据源的变化性质。为了克服不确定性(低准确性)和高维性,应用了潜在变量法,特别是主成分分析(PCA)。众所周知,PCA在从高维数据集中提取信息方面表现出出色的能力。然而,PCA仅限于小尺寸,但高度多元,数据集。为了解决这一限制,采用了主成分分析的核计算。这避免了由于数据集的大小(观察数)而导致的计算问题,并允许并行性。此外,在维数极值的情况下,提出了层次模型。最后,为了处理时间序列数据流分析的高速度,采用指数加权移动平均(EWMA)方法。本文以VAST 2012 mini challenge 2为例,对这些步骤进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tackling the Big Data 4 vs for anomaly detection
In this paper, a framework for anomaly detection and forensics in Big Data is introduced. The framework tackles the Big Data 4 Vs: Variety, Veracity, Volume and Velocity. The varied nature of the data sources is treated by transforming the typically unstructured data into a highly dimensional and structured data set. To overcome both the uncertainty (low veracity) and high dimension introduced, a latent variable method, in particular Principal Component Analysis (PCA), is applied. PCA is well known to present outstanding capabilities to extract information from highly dimensional data sets. However, PCA is limited to low size, thought highly multivariate, data sets. To handle this limitation, a kernel computation of PCA is employed. This avoids computational problems due to the size (number of observations) in the data sets and allows parallelism. Also, hierarchical models are proposed if dimensionality is extreme. Finally, to handle high velocity in analyzing time series data flows, the Exponentially Weighted Moving Average (EWMA) approach is employed. All these steps are discussed in the paper, and the VAST 2012 mini challenge 2 is used for illustration.
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