Sequential detection of common transient signals in high dimensional data stream

Yanhong Wu, W. Wu
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引用次数: 4

Abstract

Motivated from sequential detection of transient signals in high dimensional data stream, we first study the performance of EWMA and MA charts for detecting a transient signal in a single sequence in terms of the power of detection under the constraint of false detecting probability in the stationary state. Satisfactory approximations are given for the false detection probability and the power of detection. Comparison of EWMA, MA, and CUSUM charts shows that both charts are quite competitive. A multivariate EWMA procedure is considered by using the squared sum of individual EWMA processes and a fairly accurate approximation for the false detection probability is also given. To increase the power of detection, we use the Min‐δ procedure by truncating the estimated weak signals. Dow Jones 30 industrial stock prices are used for illustration.
高维数据流中常见暂态信号的顺序检测
从高维数据流中瞬态信号的顺序检测出发,首先研究了在稳态误检概率约束下,EWMA和MA图对单序列瞬态信号的检测能力。给出了假检测概率和检测功率的满意近似值。比较EWMA、MA和CUSUM图表可以发现,这两个图表都很有竞争力。利用单个EWMA过程的平方和考虑了多元EWMA过程,并给出了一个相当精确的误检概率近似值。为了提高检测功率,我们通过截断估计的弱信号来使用Min - δ过程。道琼斯30工业股票价格被用作例证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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