Data Stream Management: Aggregation, Classification, Modeling, and Operator Placement

Olken, Frank; Gruenwald, Le
November 2008
IEEE Internet Computing;Nov/Dec2008, Vol. 12 Issue 6, p9
Academic Journal
The article discusses various reports published within the issue, including one on "Time-Stamp Management and Query Execution in Data Stream Management Systems," by Yijian Bai, Hetal Thakkar, Haixun Wang and Carlo Zaniolo and another one on "Classifying Data Streams with Skewed Class Distributions and Concept Drifts," by Jing Gao, Bolin Ding, Wei Fan, Jiawei Han and Philip S. Yu.


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