基于K-NN的入侵数据集离群点检测技术

S. Sahu, S. K. Jena, Manish Verma
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引用次数: 5

摘要

数据库中的异常值是在某种程度上偏离数据集其余部分的对象。考虑用最近邻离群因子来度量数据集中目标的离群程度。与局部离群因子(Local Outlier Factor)等其他方法不同,该方法同时显示邻居和反向邻居对一个点的兴趣,然后再考虑一个对象。我们观察到,在基于k - nn的GBBK算法中,使用快速排序找到k个最近邻,耗时O N log N。然而,在本文提出的方法中,在O KN时间内完成K次搜索以找到K个最近的邻居所需的时间K < < log N.因此,本文提出的方法提高了时间复杂度。采用NSL-KDD和Fisher虹膜数据集,并将实验结果与GBBK方法进行了比较。两种方法的计算结果相同,但所提方法的计算时间更短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
K-NN Based Outlier Detection Technique on Intrusion Dataset
Outliers in the database are the objects that deviate from the rest of the dataset by some measure. The Nearest Neighbor Outlier Factor is considering to measure the degree of outlier-ness of the object in the dataset. Unlike the other methods like Local Outlier Factor, this approach shows the interest of a point from both neighbors and reverse neighbors, and after that, an object comes into consideration. We have observed that in GBBK algorithm that based on K-NN, used quick sort to find k nearest neighbors that take O N log N time. However, in proposed method, the time required for searching on K times which complete in O KN time to find k nearest neighbors k < < log N. As a result, the proposed method improves the time complexity. The NSL-KDD and Fisher iris dataset is used, and experimental results compared with the GBBK method. The result is same in both the methods, but the proposed method takes less time for computation.
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