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Using Random Forest to Learn Imbalanced Data

Using Random Forest to Learn Imbalanced Data

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In this paper we propose two ways to deal with the imbalanced data classification problem using random forest. One is based on cost sensitive learning, and the other is based on a sampling technique. Performance metrics such as precision and recall, false positive rate and false negative rate, F-measure and weighted accuracy are computed.

  Forest, Paper, Random, Random forests

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