2013
DOI: 10.1002/sam.11214
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Space‐efficient tracking of persistent items in a massive data stream

Abstract: Motivated by scenarios in network anomaly detection, we consider the problem of detecting persistent items in a data stream, which are items that occur ‘regularly’ in the stream. In contrast with heavy hitters, persistent items do not necessarily contribute significantly to the volume of a stream, and may escape detection by traditional volume‐based anomaly detectors. We first show that any online algorithm that tracks persistent items exactly must necessarily use a large workspace, and is infeasible to run on… Show more

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Cited by 12 publications
(1 citation statement)
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“…Lahiri et al [14] consider the problem of tracking persistent items in a stream. This is a di↵erent, but complementary problem to top-k frequent items.…”
Section: Centralized Top-k Frequent Itemsmentioning
confidence: 99%
“…Lahiri et al [14] consider the problem of tracking persistent items in a stream. This is a di↵erent, but complementary problem to top-k frequent items.…”
Section: Centralized Top-k Frequent Itemsmentioning
confidence: 99%