Learning Ensembles in the Presence of Imbalanced Classes

A. Saadallah, N. Piatkowski, Felix Finkeldey, P. Wiederkehr, K. Morik
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引用次数: 1

Abstract

Class imbalance occurs when data classes are not equally represented. Generally, it occurs when some classes represent rare events, while the other classes represent the counterpart of these events. Rare events, especially those that may have a negative impact, often require informed decision-making in a timely manner. However, class imbalance is known to induce a learning bias towards majority classes which implies a poor detection of minority classes. Thus, we propose a new ensemble method to handle class imbalance explicitly at training time. In contrast to existing ensemble methods for class imbalance that use either data driven or randomized approaches for their constructions, our method exploits both directions. On the one hand, ensemble members are built from randomized subsets of training data. On the other hand, we construct different scenarios of class imbalance for the unknown test data. An ensemble is built for each resulting scenario by combining random sampling with the estimation of the relative importance of specific loss functions. Final predictions are generated by a weighted average of each ensemble prediction. As opposed to existing methods, our approach does not try to fix imbalanced data sets. Instead, we show how imbalanced data sets can make classification easier, due to a limited range of true class frequencies. Our procedure promotes diversity among the ensemble members and is not sensitive to specific parameter settings. An experimental demonstration shows, that our new method outperforms or is on par with state-of-the-art ensembles and class imbalance techniques.
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在班级不平衡的情况下学习合奏
当数据类没有平等地表示时,就会发生类不平衡。通常,当一些类表示罕见事件,而另一些类表示这些事件的对应时,就会发生这种情况。罕见事件,特别是那些可能产生负面影响的事件,往往需要及时做出明智的决策。然而,我们知道,班级失衡会导致对多数班级的学习偏见,这意味着对少数班级的检测不足。因此,我们提出了一种新的集成方法来显式处理训练时的类不平衡。与使用数据驱动或随机方法构建类不平衡的现有集成方法相比,我们的方法利用了两个方向。一方面,集成成员是从训练数据的随机子集中构建的。另一方面,对于未知的测试数据,我们构建了不同的类不平衡场景。通过将随机抽样与特定损失函数的相对重要性估计相结合,为每个结果场景构建一个集成。最终的预测是由每个集合预测的加权平均值生成的。与现有方法相反,我们的方法并不试图修复不平衡的数据集。相反,我们展示了由于真实类别频率的有限范围,不平衡数据集如何使分类更容易。我们的程序促进了集合成员之间的多样性,并且对特定的参数设置不敏感。实验证明,我们的新方法优于或与最先进的合奏和班级不平衡技术相当。
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