The pairwise attribute noise detection algorithm

@article{Hulse2006ThePA,
  title={The pairwise attribute noise detection algorithm},
  author={Jason Van Hulse and Taghi M. Khoshgoftaar and Haiying Huang},
  journal={Knowledge and Information Systems},
  year={2006},
  volume={11},
  pages={171-190}
}
Analyzing the quality of data prior to constructing data mining models is emerging as an important issue. Algorithms for identifying noise in a given data set can provide a good measure of data quality. Considerable attention has been devoted to detecting class noise or labeling errors. In contrast, limited research work has been devoted to detecting instances with attribute noise, in part due to the difficulty of the problem. We present a novel approach for detecting instances with attribute… CONTINUE READING
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