基于PSO-SVM的异常大数据剔除研究

Haiting Cui
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引用次数: 3

摘要

为了提高大数据的检测率,降低大数据的漏检率和误检率,提出了一种基于PSO-SVM的异常大数据消除方法。选取大数据作为一个集合,根据模糊理论中的模糊集来度量数据的相似度,并测量其接近度。为了确定冗余数据,判断大数据是否异常,利用支持向量机对每个粒子进行训练,通过构造函数测量数据之间的接近度得到适应度函数,然后通过滑动窗口消除异常大数据。以KDD99大数据为对象,基于PSO-SVM方法的仿真实验具有较高的检测率和较低的误检率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Eliminating Abnormal Big Data based on PSO-SVM
In order to improve detection rate and reduce missing detection rate and false detection rate of big data, an abnormal large data elimination method based on PSO-SVM is proposed. Big data is chosen as a set, proximity of which is measured, according to fuzzy sets in fuzzy theory to measure data’ similarity degree. In order to determine redundant data and judge whether big data is abnormal, using support vector machine to train each particle and get fitness function through measuring the proximity between data by a constructed function, and then eliminating abnormal big data through the sliding window. Taking KDD99 big data as object, simulation experiment has higher detection rate and low false detection rate based on PSO-SVM method.
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