Published January 10, 2022 | Version v1
Journal article Open

Complex Event Forecasting with Prediction Suffix Trees

  • 1. NCSR Demokritos

Description

Complex Event Recognition (CER) systems have become popular in the past two decades due to their ability to “instantly” detect patterns on real-time streams of events. However, there is a lack of methods for forecasting when a pattern might occur before such an occurrence is actually detected by a CER engine. We present a formal framework that attempts to address the issue of Complex Event Forecasting (CEF). Our framework combines two formalisms: a) symbolic automata which are used to encode complex event patterns; and b) prediction suffix trees which can provide a succinct probabilistic description of an automaton’s behavior. We compare our proposed approach against state-of-the-art methods and show its advantage in terms of accuracy and efficiency. In particular, prediction suffix trees, being variable-order Markov models, have the ability to capture long-term dependencies in a stream by remembering only those past sequences that are informative enough. We also discuss how CEF solutions
should be best evaluated on the quality of their forecasts.

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Additional details

Funding

INFORE – Interactive Extreme-Scale Analytics and Forecasting 825070
European Commission