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Change Detection in Multivariate data streams: Online Analysis with Kernel-QuantTree

17 October 2024
Michelangelo Olmo Nogara Notarianni
Filippo Leveni
Diego Stucchi
Luca Frittoli
Giacomo Boracchi
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Abstract

We present Kernel-QuantTree Exponentially Weighted Moving Average (KQT-EWMA), a non-parametric change-detection algorithm that combines the Kernel-QuantTree (KQT) histogram and the EWMA statistic to monitor multivariate data streams online. The resulting monitoring scheme is very flexible, since histograms can be used to model any stationary distribution, and practical, since the distribution of test statistics does not depend on the distribution of datastream in stationary conditions (non-parametric monitoring). KQT-EWMA enables controlling false alarms by operating at a pre-determined Average Run Length (ARL0ARL_0ARL0​), which measures the expected number of stationary samples to be monitored before triggering a false alarm. The latter peculiarity is in contrast with most non-parametric change-detection tests, which rarely can control the ARL0ARL_0ARL0​ a priori. Our experiments on synthetic and real-world datasets demonstrate that KQT-EWMA can control ARL0ARL_0ARL0​ while achieving detection delays comparable to or lower than state-of-the-art methods designed to work in the same conditions.

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