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Exponentially Weighted Random Forest

机译:指数加权随机森林

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摘要

Random forest (RF) is a supervised, non-parametric, ensemble-based machine learning method used for classification and regression task. It is easy in terms of implementation and scalable, hence attracting many researchers. Being an ensemble-based method, it considers equal weights/votes to all atomic units i.e. decision trees. However, this may not be true always for varying test cases. Hence, the correlation between decision tree and data samples are explored in the recent past to take care of such issues. In this paper, a dynamic weighing scheme is proposed between test samples and decision tree in RF. The correlation is defined in terms of similarity between the test case and the decision tree using exponential distribution. Hence, the proposed method named as Exponentially Weighted Random Forest (EWRF). The performance of the proposed method is rigorously tested over benchmark datasets from the UCI repository for both classification and regression tasks.
机译:随机森林(RF)是一种用于分类和回归任务的基于监督的,非参数,基于集合的机器学习方法。它易于实施且可扩展,因此吸引了许多研究人员。作为一种基于整体的方法,它考虑所有原子单位(即决策树)的权重/票数相等。但是,对于不同的测试用例,情况并非总是如此。因此,最近研究了决策树和数据样本之间的相关性,以解决此类问题。本文提出了一种在RF的测试样本和决策树之间的动态加权方案。根据测试案例和决策树之间的相似性,使用指数分布来定义相关性。因此,提出的方法称为指数加权随机森林(EWRF)。针对分类和回归任务,针对来自UCI存储库的基准数据集严格测试了所提出方法的性能。

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