Title
An event processing approach to text stream analysis: basic principles of event based information filtering
Abstract
Information filtering is a crucial task in a world where data is generated steadily and at a high rate, helping users in distinguishing relevant from irrelevant content. This requires efficient processing of continuous streams of textual data. Event processing allows for real time processing of data streams. But up to now event processing has mainly been investigated in the context of business transaction-oriented domains like logistics or finance, but not explicitly in terms of text stream processing and information filtering. The growth of applications that analyze social media streams lets such an approach appear reasonable. Therefore we propose a common vocabulary represented by a text domain event model as well as a reference architecture for text stream processing and information filtering, in order to facilitate the implementation and the assessment of event processing applications for text streams. In addition we describe results from actual use cases that employ this architecture.
Year
DOI
Venue
2014
10.1145/2611286.2611288
DEBS
Keywords
Field
DocType
domain-specific architectures,event processing,text stream,information filtering,architecture,distributed applications,domain model
Data mining,Data stream mining,Use case,Information retrieval,Computer science,Complex event processing,Filter (signal processing),Reference architecture,Vocabulary,Domain model,Information filtering system
Conference
Citations 
PageRank 
References 
3
0.40
14
Authors
2
Name
Order
Citations
PageRank
Andreas Bauer12810.56
Christian Wolff27029.64