Database Reference
In-Depth Information
[48] Jayram, T., Kale, S., Vee, E.: Ecient Aggregation Algorithms for
Probabilistic Data. SODA Conference. (2007)
[49] Jayram, T., McGregor, A., Muthukrishnan, S., Vee, E.: Estimating
Statistical Aggregates on Probabilistic Data Streams. PODS Con-
ference. (2007)
[50] Cormode, G., Garofalakis, M.: Sketching Probabilistic Data
Streams. SIGMOD Conference. (2007)
[51] Kanagal, B., Deshpande, A.: Online Filtering, Smoothing and Prob-
abilistic Modeling of Streaming Data. ICDE Conference, pp. 1160-
1169. (2008)
[52] Christopher, R., Julie, L., Magdalena, B., Dan, S.: Event Queries
on Correlated Probabilistic Streams. ACM SIGMOD Conference,
pp. 715-728. (2008)
[53] Garofalakis et. al.: Probabilistic Data Management for Pervasive
Computing: The Data Furnace project. IEEE Data Engineering
Bulletin, 29(1). (2006)
[54] Chakravarthy, S., et al.:
Composite events for active databases: Se-
mantics, contexts and detection
. VLDB Conf., pp. 606-617. (1994)
[55] Zimmer, D., Unland, R.:
On the semantics of complex events in
active database management systems
. ICDE Conf., pp. 392-399.
(1999)
[56] Luckham, D.:
The Power of Events: An Introduction to Com-
plex Event Processing in Distributed Enterprise Systems
. Springer
(2002).
[57]Bornhovd,C.etal.:
Integrating Automatic Data Acquisition with
Business Processes Experiences with SAP's AutoID Infrastructure
.
VLDB Conference, pp. 1182-1188. (2004)
[58] Oracle.
Oracle Sensor Edge Server
. (2006)
http://www.oracle.
[59] IBM.
WebSphere RFID Premises Server
. (2004)
http://www-306.
[60] Microsoft.
Microsoft's RFID 'Momentum' Includes Middleware
Platform, Apps
. (2005)
[61] UCLA.
UCLA WinRFID Middleware
. (2010)
[62] Chandy, K. M., Schulte, R. W.:
Event Processing, Designing IT
Systems for Agile Companies
. McGraw Hill. (2009)