Advanced Search
CS Search Google Search
Subscribers, please login

Published Articles >> Table of Contents >> Abstract

Eighth IEEE International Symposium on Object-Oriented Real-Time Distributed Computing (ISORC'05)   pp. 158-165
Dependable Real-Time Data Mining

Full Article Text: Download PDF of full textBuy this articleGet full text from IEEE Xplore

DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ISORC.2005.24
Send link to a friend

Abstract
In this paper we discuss the need for real-time data mining for many applications in government and industry and describe resulting research issues. We also discuss dependability issues including incorporating security, integrity, timeliness and fault tolerance into data mining. Several different data mining outcomes are described with regard to their implementation in a real-time environment. These outcomes include clustering, association-rule mining, link analysis and anomaly detection. The paper describes how they would be used together in various parallel-processing architectures. Stream mining is discussed with respect to the challenges of performing data mining on stream data from sensors. The paper concludes with a summary and discussion of directions in this emerging area.
Additional Information

Citation:  Bhavani Thuraisingham, Latifur Khan, Chris Clifton, John Maurer, Marion Ceruti, "Dependable Real-Time Data Mining," isorc, pp. 158-165,  Eighth IEEE International Symposium on Object-Oriented Real-Time Distributed Computing (ISORC'05),  2005

Similar Articles

Abstract Contents
Abstract
Citation




Free access to

  • Abstracts
  • Selected PDFs

Electronic subscribers login to:

  • Access HTML/PDFs of full text articles

Subscription information

Get a Web account

PDFs require Adobe Acrobat Reader.

Peer Review Notice

Give us Feedback