一种用于多类不平衡数据学习的代价敏感神经网络集成

Peng Cao, Bo Li, Dazhe Zhao, Osmar R Zaiane
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引用次数: 14

摘要

传统的分类算法在不平衡数据集上的性能受到限制。近年来,不平衡数据学习问题引起了人们的极大兴趣。在这项工作中,我们的重点是设计修改神经网络,以适当地解决多类不平衡问题。为了提高神经网络处理多类不平衡数据的性能,提出了一种将多元随机子空间集成学习与进化搜索相结合的方法。利用进化搜索技术在不平衡数据测度的指导下优化误分类代价。此外,多样性随机子空间集成采用最小重叠机制提供多样性,从而提高神经网络的学习和优化性能。此外,集成框架可以自动确定非冗余组件的最优数量。我们已经通过实验证明,使用UCI数据集,我们的方法可以获得比最先进的不平衡数据方法更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel cost sensitive neural network ensemble for multiclass imbalance data learning
Traditional classification algorithms can be limited in their performance on imbalanced datasets. In recent years, the imbalanced data learning problem has drawn significant interest. In this work, we focus on designing modifications to neural network, in order to appropriately tackle the problem of multiclass imbalance. We propose a method that combines two ideas: diverse random subspace ensemble learning with evolutionary search, to improve the performance of neural network on multiclass imbalanced data. An evolutionary search technique is utilized to optimize the misclassification cost under the guidance of imbalanced data measures. Moreover, the diverse random subspace ensemble employs the minimum overlapping mechanism to provide diversity so as to improve the performance of the learning and optimization of neural network. Furthermore, the ensemble framework can determine the optimal amount of non-redundant components automatically. We have demonstrated experimentally using UCI datasets that our approach can achieve significantly better result than state-of-the-art methods for imbalanced data.
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