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arxiv: 1003.2823 · v1 · submitted 2010-03-14 · 📊 stat.ME · physics.data-an

Targeted Event Detection

classification 📊 stat.ME physics.data-an
keywords eventdetectionstreamchangesdataeventsonsetinterest
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We consider the problem of event detection based upon a (typically multivariate) data stream characterizing some system. Most of the time the system is quiescent - nothing of interest is happening - but occasionally events of interest occur. The goal of event detection is to raise an alarm as soon as possible after the onset of an event. A simple way of addressing the event detection problem is to look for changes in the data stream and equate `change' with `onset of event'. However, there might be many kinds of changes in the stream that are uninteresting. We assume that we are given a segment of the stream where interesting events have been marked. We propose a method for using these training data to construct a `targeted' detector that is specifically sensitive to changes signaling the onset of interesting events.

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