Event Clustering & Event Series Characterization on Expected Frequency

Abstract

We present an efficient clustering algorithm applicable to one-dimensional data such as e.g. a series of timestamps. Given an expected frequency T-1, we introduce an O(N)-efficient method of characterizing N events represented by an ordered series of timestamps t1,t2,…,tN. In practice, the method proves useful to e.g. identify time intervals of "missing" data or to locate "isolated events". Moreover, we define measures to quantify a series of events by varying T to e.g. determine the quality of an Internet of Things service.

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