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Racing for Unbalanced Methods Selection

机译:赛车用于选择不平衡方法

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摘要

State-of-the-art classification algorithms suffer when the data is skewed towards one class. This led to the development of a number of techniques to cope with unbalanced data. However, as confirmed by our experimental comparison, no technique appears to work consistently better in all conditions. We propose to use a racing method to select adaptively the most appropriate strategy for a given unbalanced task. The results show that racing is able to adapt the choice of the strategy to the specific nature of the unbalanced problem and to select rapidly the most appropriate strategy without compromising the accuracy.
机译:最先进的分类算法遭受数据偏向一个类时。这导致开发许多技术来应对不平衡数据。然而,正如我们实验比较所确认的那样,在所有条件下,没有技术始终如一地工作。我们建议使用赛跑方法为给定不平衡任务进行自适应最合适的策略。结果表明,赛车能够调整对不平衡问题的特定性质的策略的选择,并在不影响精度的情况下快速选择最合适的策略。

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