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Sample re-weighting hyper box classifier for multi-class data classification

机译:用于多类别数据分类的样本重新加权超框分类器

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In this work, we propose two novel classifiers for multi-class classification problems using mathematical programming optimisation techniques. A hyper box-based classifier (Xu & Papageorgiou, 2009) that iteratively constructs hyper boxes to enclose samples of different classes has been adopted. We firstly propose a new solution procedure that updates the sample weights during each iteration, which tweaks the model to favour those difficult samples in the next iteration and therefore achieves a better final solution. Through a number of real world data classification problems, we demonstrate that the proposed refined classifier results in consistently good classification performance, outperforming the original hyper box classifier and a number of other state-of-the-art classifiers. Furthermore, we introduce a simple data space partition method to reduce the computational cost of the proposed sample re-weighting hyper box classifier. The partition method partitions the original data-set into two disjoint regions, followed by training sample re-weighting hyper box classifier for each region respectively. Through some real world datasets, we demonstrate the data space partition method considerably reduces the computational cost while maintaining the level of prediction accuracies.
机译:在这项工作中,我们使用数学编程优化技术为多类分类问题提出了两种新颖的分类器。采用了基于超级盒的分类器(Xu&Papageorgiou,2009),该分类器迭代构造超级盒以封装不同类别的样本。我们首先提出一种新的解决方案过程,该过程在每次迭代过程中都会更新样本权重,从而对模型进行调整以使其在下一次迭代中偏向那些困难的样本,从而获得更好的最终解决方案。通过许多现实世界中的数据分类问题,我们证明了拟议的改进分类器具有始终如一的良好分类性能,胜过原始的超级盒分类器和许多其他最新分类器。此外,我们介绍了一种简单的数据空间划分方法,以减少所提出的样本重新加权超框分类器的计算成本。分区方法将原始数据集划分为两个不相交的区域,然后分别为每个区域训练样本重新加权超框分类器。通过一些现实世界的数据集,我们证明了数据空间分区方法可以在保持预测精度水平的同时,大大降低计算成本。

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