基于核函数的非参数异常检测

Shaofeng Zou, Yingbin Liang, H. V. Poor, Xinghua Shi
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引用次数: 4

摘要

研究了一个异常检测问题,其中总共有n个序列,有s个异常序列需要检测。每个正常序列包含m个从分布p中抽取的独立同分布(i.i.d)样本,而每个异常序列包含m个i.d个从不同于p的分布q中抽取的样本。假设p和q的分布是先验未知的。研究了由p生成参考序列的场景。基于分布的均值嵌入到再现核希尔伯特空间(RKHS)中,以最大均值差异(MMD)作为度量来构造无分布检验。结果表明,当序列数n趋于无穷时,如果s的值已知,则每个序列中的样本数m应为O(log n)阶或更大,以便所开发的测试能够一致地检测到s个异常序列。如果s的值未知,则m的数量级应严格大于O(log n)。所有已开发的测试的计算复杂度均显示为多项式。数值结果表明,在各种情况下,这些新测试优于(或表现良好)基于其他竞争性传统统计方法和基于核的方法的测试。
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Kernel-based nonparametric anomaly detection
An anomaly detection problem is investigated, in which there are totally n sequences, with s anomalous sequences to be detected. Each normal sequence contains m independent and identically distributed (i.i.d.) samples drawn from a distribution p, whereas each anomalous sequence contains m i.i.d. samples drawn from a distribution q that is distinct from p. The distributions p and q are assumed to be unknown a priori. The scenario with a reference sequence generated by p is studied. Distribution-free tests are constructed using maximum mean discrepancy (MMD) as the metric, which is based on mean embeddings of distributions into a reproducing kernel Hilbert space (RKHS). It is shown that as the number n of sequences goes to infinity, if the value of s is known, then the number m of samples in each sequence should be of order O(log n) or larger in order for the developed tests to consistently detect s anomalous sequences. If the value of s is unknown, then m should be of order strictly larger than O(log n). The computational complexity of all developed tests is shown to be polynomial. Numerical results demonstrate that these new tests outperform (or perform as well as) tests based on other competitive traditional statistical approaches and kernel-based approaches under various cases.
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