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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 ΔT1\Delta T^{-1}, we introduce an O(N)\mathcal{O}(N)-efficient method of characterizing NN events represented by an ordered series of timestamps t1,t2,,tNt_1,t_2,\dots,t_N. 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 ΔT\Delta T to e.g. determine the quality of an Internet of Things service.

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