首页> 外文会议>International work-conference on artificial neural networks;IWANN 2011 >Back Propagation with Balanced MSE Cost Function and Nearest Neighbor Editing for Handling Class Overlap and Class Imbalance
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Back Propagation with Balanced MSE Cost Function and Nearest Neighbor Editing for Handling Class Overlap and Class Imbalance

机译:具有平衡的MSE成本函数和最近邻域编辑的反向传播,用于处理班级重叠和班级不平衡

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The class imbalance problem has been considered a critical factor for designing and constructing the supervised classifiers. In the case of artificial neural networks, this complexity negatively affects the generalization process on under-represented classes. However, it has also been observed that the decrease in the performance attainable of standard learners is not directly caused by the class imbalance, but is also related with other difficulties, such as overlapping. In this work, a new empirical study for handling class overlap and class imbalance on multi-class problem is described. In order to solve this problem, we propose the joint use of editing techniques and a modified MSE cost function for MLP. This analysis was made on a remote sensing data . The experimental results demonstrate the consistency and validity of the combined strategy here proposed.
机译:类不平衡问题已被认为是设计和构造监督分类器的关键因素。在人工神经网络的情况下,这种复杂性会对代表性不足的类的泛化过程产生负面影响。但是,也已经观察到,标准学习者可达到的成绩下降并非直接由班级失衡引起,而是与其他困难(例如重叠)有关。在这项工作中,描述了处理多类问题上的类重叠和类不平衡的新的经验研究。为了解决这个问题,我们建议联合使用编辑技术和MLP的修改后的MSE成本函数。对遥感数据进行了分析。实验结果证明了本文提出的组合策略的一致性和有效性。

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