DocumentCode :
2865217
Title :
On reducing classifier granularity in mining concept-drifting data streams
Author :
Wang, Peng ; Wang, Haixun ; Wu, Xiaochen ; Wang, Wei ; Shi, Baile
Author_Institution :
Fudan Univ., Shanghai, China
fYear :
2005
fDate :
27-30 Nov. 2005
Abstract :
Many applications use classification models on streaming data to detect actionable alerts. Due to concept drifts in the underlying data, how to maintain a model´s up-to-dateness has become one of the most challenging tasks in mining data streams. State of the art approaches, including both the incrementally updated classifiers and the ensemble classifiers, have proved that model update is a very costly process. In this paper, we introduce the concept of model granularity. We show that reducing model granularity will reduce model update cost. Indeed, models of fine granularity enable us to efficiently pinpoint local components in the model that are affected by the concept drift. It also enables us to derive new components that can easily integrate with the model to reflect the current data distribution, thus avoiding expensive updates on a global scale. Experiments on real and synthetic data show that our approach is able to maintain good prediction accuracy at a fraction of model updating cost of state of the art approaches.
Keywords :
data mining; pattern classification; classifier granularity; concept-drifting data stream mining; ensemble classifiers; incrementally updated classifier; model granularity reduction; model update cost reduction; Accuracy; Costs; Data mining; Decision trees; Predictive models; Training data; Ubiquitous computing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Data Mining, Fifth IEEE International Conference on
ISSN :
1550-4786
Print_ISBN :
0-7695-2278-5
Type :
conf
DOI :
10.1109/ICDM.2005.108
Filename :
1565714
Link To Document :
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