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Clustering and Weighted Scoring in Geometric Space Support Vector Machine Ensemble for Highly Imbalanced Data Classification

机译:高度不平衡数据分类的几何空间支持向量机集合中的聚类和加权评分

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Learning from imbalanced datasets is a challenging task for standard classification algorithms. In general, there are two main approaches to solve the problem of imbalanced data: algorithm-level and data-level solutions. This paper deals with the second approach. In particular, this paper shows a new proposition for calculating the weighted score function to use in the integration phase of the multiple classification system. The presented research includes experimental evaluation over multiple, open-source, highly imbalanced datasets, presenting the results of comparing the proposed algorithm with three other approaches in the context of six performance measures. Comprehensive experimental results show that the proposed algorithm has better performance measures than the other ensemble methods for highly imbalanced datasets.
机译:对于标准分类算法,从不平衡数据集中学习是一项艰巨的任务。通常,有两种主要方法可以解决数据不平衡的问题:算法级别的解决方案和数据级别的解决方案。本文涉及第二种方法。特别是,本文显示了一种用于计算加权分数函数的新命题,以用于多重分类系统的集成阶段。提出的研究包括对多个开放源,高度不平衡的数据集的实验评估,提出了在六个性能指标的背景下将所提出的算法与其他三种方法进行比较的结果。综合实验结果表明,对于高度不平衡的数据集,该算法比其他集成方法具有更好的性能指标。

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