Contextualised Event-driven Prediction with Ontology-based Similarity
S. Sen, and J. Ma. Intelligent Event Processing, Papers from the 2009 AAAI Spring Symposium, SS-09-05, page 73--79. Menlo Park, CA, AAAI Press, (2009)
Abstract
Event-driven processing becomes ever important for applications such as reactive context-aware mobile applications, attention-handling and pervasive collaboration systems etc. However today's reactive systems define complex events with rather precise specifications. In some applications, such as fraud or failure detection, identification of similar event patterns may be of tremendous use. These kind of applications need to identify not only critical situations but also situations which are similar enough to them. We present a novel approach for event-driven processing which is realized by combining reactive rules with ontologies. Ontologies are used to capture the context in which certain active behavior is appropriate (i.e., to discover situations in which particular reactive rules fire). Second, ontologies together with similarity search techniques are utilised to enable discovery of similar complex event patterns.
%0 Conference Paper
%1 SenMa09AAAISS
%A Sen, Sinan
%A Ma, Jun
%B Intelligent Event Processing, Papers from the 2009 AAAI Spring Symposium
%C Menlo Park, CA
%D 2009
%E Stojanovic, Nenad
%E Abecker, Andreas
%E Etzion, Opher
%E Paschke, Adrian
%I AAAI Press
%K 01801 aaai paper embedded mobile user interface team ai temporal knowledge processing ontology pattern analysis rules
%N SS-09-05
%P 73--79
%T Contextualised Event-driven Prediction with Ontology-based Similarity
%U http://www.aaai.org/Library/Symposia/Spring/2009/ss09-05-009.php
%X Event-driven processing becomes ever important for applications such as reactive context-aware mobile applications, attention-handling and pervasive collaboration systems etc. However today's reactive systems define complex events with rather precise specifications. In some applications, such as fraud or failure detection, identification of similar event patterns may be of tremendous use. These kind of applications need to identify not only critical situations but also situations which are similar enough to them. We present a novel approach for event-driven processing which is realized by combining reactive rules with ontologies. Ontologies are used to capture the context in which certain active behavior is appropriate (i.e., to discover situations in which particular reactive rules fire). Second, ontologies together with similarity search techniques are utilised to enable discovery of similar complex event patterns.
@inproceedings{SenMa09AAAISS,
abstract = {Event-driven processing becomes ever important for applications such as reactive context-aware mobile applications, attention-handling and pervasive collaboration systems etc. However today's reactive systems define complex events with rather precise specifications. In some applications, such as fraud or failure detection, identification of similar event patterns may be of tremendous use. These kind of applications need to identify not only critical situations but also situations which are similar enough to them. We present a novel approach for event-driven processing which is realized by combining reactive rules with ontologies. Ontologies are used to capture the context in which certain active behavior is appropriate (i.e., to discover situations in which particular reactive rules fire). Second, ontologies together with similarity search techniques are utilised to enable discovery of similar complex event patterns.},
added-at = {2012-05-30T10:53:59.000+0200},
address = {Menlo Park, CA},
author = {Sen, Sinan and Ma, Jun},
biburl = {https://www.bibsonomy.org/bibtex/2d44b109a3c367261ca0b30ba5368d3ea/flint63},
booktitle = {Intelligent Event Processing, Papers from the 2009 AAAI Spring Symposium},
editor = {Stojanovic, Nenad and Abecker, Andreas and Etzion, Opher and Paschke, Adrian},
file = {AAAI Digital Library:2009/SenMa09AAAISS.pdf:PDF},
groups = {public},
interhash = {1c7b8770379ddc3189baed12a6a5c663},
intrahash = {818c9dfefd84539fd3b7ab9210a227f1},
keywords = {01801 aaai paper embedded mobile user interface team ai temporal knowledge processing ontology pattern analysis rules},
number = {SS-09-05},
pages = {73--79},
publisher = {AAAI Press},
series = {Technical Report},
timestamp = {2018-04-18T16:00:16.000+0200},
title = {Contextualised Event-driven Prediction with Ontology-based Similarity},
url = {http://www.aaai.org/Library/Symposia/Spring/2009/ss09-05-009.php},
username = {flint63},
year = 2009
}