DocumentCode
1120243
Title
Efficient Process of Top-k Range-Sum Queries over Multiple Streams with Minimized Global Error
Author
Hung, Hao-Ping ; Chuang, Kun-Ta ; Chen, Ming-Syan
Volume
19
Issue
10
fYear
2007
Firstpage
1404
Lastpage
1419
Abstract
Due to the resource limitation in the data stream environments, it has been reported that answering user queries according to the wavelet synopsis of a stream is an essential ability of a Data Stream Management System (DSMS). In the literature, recent research has been elaborated upon minimizing the local error metric of an individual stream. However, many emergent applications, such as stock marketing and sensor detection, also call for the need of recording multiple streams in a commercial DSMS. As shown in our thorough analysis and experimental studies, minimizing global error in multiple-stream environments leads to good reliability for DSMS to answer the queries; in contrast, only minimizing local error may lead to significant loss of query accuracy. As such, we first study in this paper the problem of maintaining the wavelet coefficients of multiple streams within collective memory so that the predetermined global error metric is minimized. Moreover, we also examine a promising application in the multistream environment, i.e., the queries for top-k range sum. We resolve the problem of efficient top-k query processing with minimized global error by developing a general framework. For the purposes of maintaining the wavelet coefficients and processing top-k queries, several well-designed algorithms are utilized to optimize the performance of each primary component of this general framework. We also evaluate the proposed algorithms empirically on real and simulated data streams and show that our framework can process top-k queries accurately and efficiently.
Keywords
Databases; Environmental management; Maintenance; Monitoring; Query processing; Resource management; Temperature sensors; Wavelet coefficients; Wavelet transforms; Web pages; Data Stream Management System; Top-K Queries; Wavelet Synopses;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2007.1070
Filename
4302746
Link To Document