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ICDE
2008
IEEE

Stop Chasing Trends: Discovering High Order Models in Evolving Data

15 years 26 days ago
Stop Chasing Trends: Discovering High Order Models in Evolving Data
Abstract-- Many applications are driven by evolving data -patterns in web traffic, program execution traces, network event logs, etc., are often non-stationary. Building prediction models for evolving data becomes an important and challenging task. Currently, most approaches work by "chasing trends", that is, they keep learning or updating models from the evolving data, and use these impromptu models for online prediction. In many cases, this proves to be both costly and ineffective -- much time is wasted on re-learning recurring concepts, yet the classifier may remain one step behind the current trend all the time. In this paper, we propose to mine high-order models in evolving data. More often than not, there are a limited number of concepts, or stable distributions, in the data stream, and concepts switch between each other constantly. We mine all such concepts offline from a historical stream, and build high quality models for each of them. At run time, combining historic...
Shixi Chen, Haixun Wang, Shuigeng Zhou, Philip S.
Added 01 Nov 2009
Updated 01 Nov 2009
Type Conference
Year 2008
Where ICDE
Authors Shixi Chen, Haixun Wang, Shuigeng Zhou, Philip S. Yu
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