Interval-based Queries over Lossy IoT Event Streams

Author:

Busany Nimrod1,Aa Han Van Der2ORCID,Senderovich Arik3,Gal Avigdor4,Weidlich Matthias2ORCID

Affiliation:

1. Tel Aviv University, Israel

2. Humboldt-Universität zu Berlin, Germany

3. University of Toronto, Ontario, Canada

4. Technion, Haifa, Israel

Abstract

Recognising patterns that correlate multiple events over time becomes increasingly important in applications that exploit the Internet of Things, reaching from urban transportation through surveillance monitoring to business workflows. In many real-world scenarios, however, timestamps of events may be erroneously recorded, and events may be dropped from a stream due to network failures or load shedding policies. In this work, we present SimpMatch, a novel simplex-based algorithm for probabilistic evaluation of event queries using constraints over event orderings in a stream. Our approach avoids learning probability distributions for time-points or occurrence intervals. Instead, we employ the abstraction of segmented intervals and compute the probability of a sequence of such segments using the notion of order statistics. The algorithm runs in linear time to the number of lost events and shows high accuracy, yielding exact results if event generation is based on a Poisson process and providing a good approximation otherwise. We demonstrate empirically that SimpMatch enables efficient and effective reasoning over event streams, outperforming state-of-the-art methods for probabilistic evaluation of event queries by up to two orders of magnitude.

Funder

Alexander von Humboldt Foundation

German Research Foundation

EU Horizon 2020 Programme

Publisher

Association for Computing Machinery (ACM)

Reference52 articles.

1. [n.d.]. CAVIAR project. Retrieved from http://homepages.inf.ed.ac.uk/rbf/CAVIAR/. [n.d.]. CAVIAR project. Retrieved from http://homepages.inf.ed.ac.uk/rbf/CAVIAR/.

2. [n.d.]. Dublinked. Retrieved from http://dublinked.ie/. [n.d.]. Dublinked. Retrieved from http://dublinked.ie/.

3. [n.d.]. VaVeL European project. Retrieved from http://www.vavel-project.eu/. [n.d.]. VaVeL European project. Retrieved from http://www.vavel-project.eu/.

4. Jagrati Agrawal Yanlei Diao Daniel Gyllstrom and Neil Immerman. 2008. Efficient pattern matching over event streams See Reference [] 147--160. Jagrati Agrawal Yanlei Diao Daniel Gyllstrom and Neil Immerman. 2008. Efficient pattern matching over event streams See Reference [] 147--160.

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