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ICDM
2008
IEEE

Start Globally, Optimize Locally, Predict Globally: Improving Performance on Imbalanced Data

13 years 11 months ago
Start Globally, Optimize Locally, Predict Globally: Improving Performance on Imbalanced Data
Class imbalance is a ubiquitous problem in supervised learning and has gained wide-scale attention in the literature. Perhaps the most prevalent solution is to apply sampling to training data in order improve classifier performance. The typical approach will apply uniform levels of sampling globally. However, we believe that data is typically multi-modal, which suggests sampling should be treated locally rather than globally. It is the purpose of this paper to propose a framework which first identifies meaningful regions of data and then proceeds to find optimal sampling levels within each. This paper demonstrates that a global classifier trained on data locally sampled produces superior rank-orderings on a wide range of real-world and artificial datasets as compared to contemporary global sampling methods.
David A. Cieslak, Nitesh V. Chawla
Added 30 May 2010
Updated 30 May 2010
Type Conference
Year 2008
Where ICDM
Authors David A. Cieslak, Nitesh V. Chawla
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