Context-aware adaptive data stream mining

Document identifier: oai:DiVA.org:ltu-7750
Access full text here:10.3233/IDA-2009-0374
Publication year: 2009
Abstract:

In resource-constrained devices, adaptation of data stream processing to variations of data rates and availability of resources is crucial for consistency and continuity of running applications. However, to enhance and maximize the benefits of adaptation, there is a need to go beyond mere computational and device capabilities to encompass the full spectrum of context-awareness. This paper presents a general approach for context-aware adaptive mining of data streams that aims to dynamically and autonomously adjust data stream mining parameters according to changes in context and situations. We perform intelligent and real-time analysis of data streams generated from sensors that is under-pinned using context-aware adaptation. A prototype of the proposed architecture is implemented and evaluated in the paper through a real-world scenario in the area of healthcare monitoring.

Authors

Pari Delir Haghighi

Centre for Distributed Systems and Software Engineering, Monash University
Other publications >>

Arkady Zaslavsky

Other publications >>

Shonali Krishnaswamy

Centre for Distributed Systems and Software Engineering, Monash University
Other publications >>

Mohamed Gaber

Centre for Distributed Systems and Software Engineering, Monash University
Other publications >>

Seng Wai Loke

Department of Computer Science and Computer Engineering, La Trobe University
Other publications >>

Record metadata

Click to view metadata