基于新分集度量的稀疏集合剪枝算法

Sanyam Shukla, Jivitesh Sharma, Shankul Khare, Samruddhi Kochkar, Vanya Dharni
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引用次数: 1

摘要

极限学习机是目前最先进的用于分类和回归的监督机器学习技术。然而,由于输入层和隐藏层之间的权重随机初始化,单个ELM分类器可能会产生错误或倾斜的结果。为了克服这种不稳定性问题,可以采用集成方法。集成方法可能存在冗余问题,即集成可能包含多个冗余分类器,这些分类器可以是弱分类器,也可以是高度相关的分类器。集成修剪可以用来删除这些冗余的分类器。为了对边界实例进行正确的分类,剪枝集合不仅要精确而且要多样化。这项工作提出了一种集成剪枝算法,它试图在准确性和多样性之间建立一种权衡。本文还提出了一种基于分类器的多样性和对整体贡献的评分指标。结果表明,在准确性和多样性方面,与未修剪的集合相比,修剪后的集合表现同样好,在某些情况下甚至更好。实验结果表明,该算法的性能优于VELM算法。该算法将集合大小减小到小于原始集合大小的60%(原始集合大小设置为50)。
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A novel sparse ensemble pruning algorithm using a new diversity measure
Extreme learning machine is state of art supervised machine learning technique for classification and regression. A single ELM classifier can however generate faulty or skewed results due to random initialization of weights between input and hidden layer. To overcome this instability problem ensemble methods can be employed. Ensemble methods may have problem of redundancy i.e. ensemble may contain several redundant classifiers which can be weak or highly correlated classifiers. Ensemble pruning can be used to remove these redundant classifiers. The pruned ensemble should not only be accurate but diverse as well in order to correctly classify boundary instances. This work proposes an ensemble pruning algorithm which tries to establish a tradeoff between accuracy and diversity. The paper also proposes a metric which scores classifiers based on their diversity and contribution towards the ensemble. The results show that the pruned ensemble performs equally well or in some cases even better as compared to the unpruned set in terms of accuracy and diversity. The results of the experiments show that the proposed algorithm performs better than VELM. The proposed algorithm reduces the ensemble size to less than 60 % of the original ensemble size (original ensemble size is set to 50).
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