Transfer estimation of evolving class priors in data stream classification
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摘要
Data stream classification is a hot topic in data mining research. The great challenge is that the class priors may evolve along the data sequence. Algorithms have been proposed to estimate the dynamic class priors and adjust the classifier accordingly. However, the existing algorithms do not perform well on prior estimation due to the lack of samples from the target distribution. Sample size has great effects in parameter estimation and small-sample effects greatly contaminate the estimation performance. In this paper, we propose a novel parameter estimation method called transfer estimation. Transfer estimation makes use of samples not only from the target distribution but also from similar distributions. We apply this new estimation method to the existing algorithms and obtain an improved algorithm. Experiments on both synthetic and real data sets show that the improved algorithm outperforms the existing algorithms on both class prior estimation and classification.
论文关键词:Concept drift,Transfer learning,Prior estimation
论文评审过程:Received 29 June 2009, Revised 15 February 2010, Accepted 25 March 2010, Available online 31 March 2010.
论文官网地址:https://doi.org/10.1016/j.patcog.2010.03.021