Soft-CsGDT: soft cost-sensitive Gaussian decision tree for cost-sensitive classification of data streams

Ning Guo, Yanhua Yu, Meina Song, Junde Song, Yu Fu
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引用次数: 2

Abstract

Nowadays in many real-world scenarios, high speed data streams are usually with non-uniform misclassification costs and thus call for cost-sensitive classification algorithms of data streams. However, only little literature focuses on this issue. On the other hand, the existing algorithms for cost-sensitive classification can achieve excellent performance in the metric of total misclassification costs, but always lead to obvious reduction of accuracy, which restrains the practical application greatly. In this paper, we present an improved folk theorem. Based on the new theorem, the existing accuracy-based classification algorithm can be converted into soft cost-sensitive one immediately, which allows us to take both accuracy and cost into account. Following the idea of this theorem, the soft-CsGDT algorithm is proposed to process the data streams with non-uniform misclassification costs, which is an expansion of GDT. With both synthetic and real-world datasets, the experimental results show that compared with the cost-sensitive algorithm, the accuracy in our soft-CsGDT is significantly improved, while the total misclassification costs are approximately the same.
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soft - csgdt:用于代价敏感数据流分类的软代价敏感高斯决策树
目前,在许多现实场景中,高速数据流通常具有不均匀的误分类代价,因此需要对代价敏感的数据流分类算法。然而,只有很少的文献关注这个问题。另一方面,现有的代价敏感分类算法虽然在总误分类代价度量上表现优异,但往往导致准确率的明显降低,极大地制约了实际应用。本文提出了一个改进的民间定理。基于新定理,现有的基于精度的分类算法可以立即转化为软代价敏感的分类算法,从而使我们可以同时考虑精度和代价。根据该定理的思想,提出了soft-CsGDT算法来处理错误分类代价不均匀的数据流,这是对GDT的扩展。在合成数据集和真实数据集上,实验结果表明,与代价敏感算法相比,我们的软csgdt算法的准确率显著提高,而总误分类代价大致相同。
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