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Nonparametric Detection of Anomalous Data Streams

机译:异常数据流的非参数检测

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摘要

A nonparametric anomalous hypothesis testing problem is investigated, in which there are totally n observed sequences out of which s anomalous sequences are to be detected. Each typical sequence consists of m independent and identically distributed (i.i.d.) samples drawn from a distribution p, whereas each anomalous sequence consists of mi.i.d. samples drawn from a distribution q that is distinct from p. The distributions p and q are assumed to be unknown in advance. Distribution-free tests are constructed by using the maximum mean discrepancy as the metric, which is based on mean embeddings of distributions into a reproducing kernel Hilbert space. The probability of error is bounded as a function of the sample size m, the number s of anomalous sequences, and the number n of sequences. It is shown that with s known, the constructed test is exponentially consistent if m is greater than a constant factor of log n, for any p and q, whereas with s unknown, m should have an order strictly greater than log n. Furthermore, it is shown that no test can be consistent for arbitrary p and q if m is less than a constant factor of log n. Thus, the order-level optimality of the proposed test is established. Numerical results are provided to demonstrate that the proposed tests outperform (or perform as well as) tests based on other competitive approaches under various cases.
机译:研究了一个非参数异常假设检验问题,其中总共有n个观察到的序列,其中要检测到s个异常序列。每个典型序列由m个独立且分布均匀的(i.i.d.)样本组成,这些样本取自分布p,而每个异常序列均由mi.i.d组成。从与p不同的分布q抽取的样本。假设分布p和q事先未知。通过使用最大平均差异作为度量来构建无分布测试,该度量基于分布到再现内核Hilbert空间中的平均嵌入。错误概率的范围取决于样本大小m,异常序列的数量s和序列的数量n。结果表明,对于已知,对于任何p和q,如果m大于log n的常数,则构造的测试是指数一致的,而对于未知,m的阶数应严格大于log n。此外,还表明,如果m小于log n的恒定因子,则任意p和q的测试都无法保持一致。因此,建立了所提出的测试的订单级最优性。提供的数值结果表明,在各种情况下,基于其他竞争方法,所提出的测试的性能优于(或执行得很好)。

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