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Sampling Methods in Genetic Programming for Classification with Unbalanced Data

机译:遗传规划中不平衡数据分类的抽样方法

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摘要

This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classification accuracy in binary classification problems in which the datasets have a class imbalance. Class imbalance occurs when there are more data instances in one class than the other. As a consequence of this imbalance, when overall classification rate is used as the fitness function, as in standard GP approaches, the result is often biased towards the majority class, at the expense of poor minority class accuracy. We establish that the variation in training performance introduced by sampling examples from the training set is no worse than the variation between GP runs already accepted. Results also show that the use of sampling methods during training can improve minority class classification accuracy and the robustness of classifiers evolved, giving performance on the test set better than that of those classifiers which made up the training set Pareto front.
机译:这项工作调查了遗传编程(GP)中采样方法的使用,以提高数据集具有类不平衡的二元分类问题的分类准确性。当一个类别中的数据实例多于另一个类别时,会发生类别不平衡。这种不平衡的结果是,当使用整体分类率作为适应度函数时(如在标准GP方法中那样),结果通常会偏向多数类,以牺牲少数类的准确性为代价。我们确定,通过训练集中的样本示例引入的训练性能差异不会比已经接受的GP跑步之间的差异更差。结果还表明,在训练过程中使用采样方法可以提高少数族裔分类的准确性和分类器的鲁棒性,从而使测试集的性能优于组成训练集Pareto前沿的那些分类器。

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  • 来源
  • 会议地点 Adelaide(AU);Adelaide(AU)
  • 作者单位

    School of Mathematics, Statistics and Operations Research;

    rnSchool of Mathematics, Statistics and Operations Research;

    rnSchool of Engineering and Computer Science Victoria University of Wellington, P.O. Box 600, Wellington, New Zealand;

    rnSchool of Engineering and Computer Science Victoria University of Wellington, P.O. Box 600, Wellington, New Zealand;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
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