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Super RaSE: Super Random Subspace Ensemble Classification

机译:超级剃须:超级随机子空间集分类

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We propose a new ensemble classification algorithm, named super random subspace ensemble (Super RaSE), to tackle the sparse classification problem. The proposed algorithm is motivated by the random subspace ensemble algorithm (RaSE). The RaSE method was shown to be a flexible framework that can be coupled with any existing base classification. However, the success of RaSE largely depends on the proper choice of the base classifier, which is unfortunately unknown to us. In this work, we show that Super RaSE avoids the need to choose a base classifier by randomly sampling a collection of classifiers together with the subspace. As a result, Super RaSE is more flexible and robust than RaSE. In addition to the vanilla Super RaSE, we also develop the iterative Super RaSE, which adaptively changes the base classifier distribution as well as the subspace distribution. We show that the Super RaSE algorithm and its iterative version perform competitively for a wide range of simulated data sets and two real data examples. The new Super RaSE algorithm and its iterative version are implemented in a new version of the R package RaSEn.
机译:我们提出了一种新的集合分类算法,名为Super随机子空间集合(超级rase),以解决稀疏的分类问题。所提出的算法由随机子空间集合算法(RASE)激励。 rase方法被示出为灵活的框架,其可以与任何现有的基本分类耦合。 However, the success of RaSE largely depends on the proper choice of the base classifier, which is unfortunately unknown to us.在这项工作中,我们显示Super Rase避免了通过随机采样与子空间一起进行分类器的集合来选择基本分类器的需要。结果,超级rase比Rase更柔韧且稳健。除了vanilla超级rase之外,我们还开发了迭代超级rase,可自适应地改变基本分类器分布以及子空间分布。我们表明超级rase算法及其迭代版本竞争地对广泛的模拟数据集和两个实际数据示例进行了竞争力。新的超级rase算法及其迭代版本在R包Rasen的新版本中实现。

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