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ML
2010
ACM

Fast adaptive algorithms for abrupt change detection

13 years 3 months ago
Fast adaptive algorithms for abrupt change detection
We propose two fast algorithms for abrupt change detection in streaming data that can operate on arbitrary unknown data distributions before and after the change. The first algorithm, MB-GT, computes efficiently the average Euclidean distance between all pairs of data points before and after the hypothesized change. The second algorithm, MB-CUSUM, computes the log-likelihood ratio statistic for the data distributions before and after the change, similarly to the classical CUSUM algorithm, but unlike that algorithm, MB-CUSUM does not need to know the exact distributions, and uses kernel density estimates instead. Although a straightforward computation of the two change statistics would have computational complexity of ¡i¿O¡/i¿(¡i¿N¡/i¿¡sup¿4¡/sup¿) with respect to the size ¡i¿N¡/i¿ of the streaming data buffer, the proposed algorithms are able to use the computational structure of these statistics to achieve a computational complexity of only ¡i¿O(¡i¿N¡/i¿¡sup...
Daniel Nikovski, Ankur Jain
Added 29 Jan 2011
Updated 29 Jan 2011
Type Journal
Year 2010
Where ML
Authors Daniel Nikovski, Ankur Jain
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