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The Imbalanced Training Sample Problem: Under or over Sampling?

机译:不平衡的培训样本问题:在抽样下或过度抽样?

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摘要

The problem of imbalanced training sets in supervised pattern recognition methods is receiving growing attention. Imbalanced training sample means that one class is represented by a large number of examples while the other is represented by only a few. It has been observed that this situation, which arises in several practical domains, may produce an important deterioration of the classification accuracy, in particular with patterns belonging to the less represented classes. In this paper we present a study concerning the relative merits of several re-sizing techniques for handling the imbalance issue. We assess also the convenience of combining some of these techniques.
机译:监督模式识别方法中不平衡培训集的问题正在接受越来越关注。不平衡的训练样本意味着一类由大量示例表示,而另一类仅由少数几个表示。已经观察到这种情况下出现在几个实际域中,可能产生分类精度的重要恶化,特别是属于代表的类的模式。在本文中,我们提出了一项关于处理不平衡问题的多种重新定量技术的相对优点的研究。我们还评估了组合其中一些技术的便利性。

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