BOOKS
BOOK SERIES
JOURNALS
PROCEEDINGS
TEACHING CASES
PAY-PER-VIEW
REFERENCE
E-RESOURCES
ABOUT IGI
BECOME AN AUTHOR/EDITOR  |   MAILING LIST  |   HOW TO ORDER  |   LIBRARY SUGGESTION | EXAMINATION REQUESTS/COURSE ADOPTION | DISTRIBUTORS
IGI Online Bookstore
Click here to PLAY Demo Click here to Start Search Search 30,000+ chapters, articles, and cases - available for download today!

IGI Global Online Symposium!



  Browse Our Bookstore
IGI Catalogs & Newsletters
Forthcoming Titles
Featured Book
By Category
Advanced Search

  Shop
My Profile
View My Cart

  Contact Us
IGI Global
Main Office
701 E. Chocolate Avenue
Hershey, PA 17033, USA
Tel: 717-533-8845 x100
Toll Free: 1-866-342-6657
Fax: 717-533-8661
    or 717-533-7115
 

Periodic Streaming Data Reduction Using Flexible Adjustment of Time Section Size:
Our Price:    $30.00 US
Article #:    ITJ2697
Pages:    37 - 56
Source:    International Journal of Data Warehousing and Mining, Vol. 1, Issue 1
Author(s):    Kim, Jaehoon; Park, Seog
Affiliation(s):    Sogang University, Korea; Sogang University, Korea

Order Now! This document will be delivered electronically. Terms of Delivery
 

Description
Much of the research regarding streaming data has focused only on real time querying and analysis of recent data stream allowable in memory. However, as data stream mining, or tracking of past data streams, is often required, it becomes necessary to store large volumes of streaming data in stable storage. Moreover, as stable storage has restricted capacity, past data stream must be summarized. The summarization must be performed periodically because streaming data flows continuously, quickly, and endlessly. Therefore, in this paper, we propose an efficient periodic summarization method with a flexible storage allocation. It improves the overall estimation error by flexibly adjusting the size of the summarized data of each local time section. Additionally, as the processing overhead of compression and the disk I/O cost of decompression can be an important factor for quick summarization, we also consider setting the proper size of data stream to be summarized at a time. Some experimental results with artificial data sets as well as real life data show that our flexible approach is more efficient than the existing fixed approach.

 
Books  |  Book Series  |  Journals  |  Proceedings  |  Teaching Cases  |  Pay-Per-View  |  Reference  |  E-Resources  |  About IGI
Become An Author/Editor  |  Mailing List  |  How To Order  |  Library Suggestion  |  Examination Requests

IGI Global - All Rights Reserved ©2001-2010