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首页> 外文期刊>Journal of machine learning research >RaSE: Random Subspace Ensemble Classification
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RaSE: Random Subspace Ensemble Classification

机译:剃须:随机子空间集分类

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摘要

We propose a flexible ensemble classification framework, Random Subspace Ensemble (RaSE), for sparse classification. In the RaSE algorithm, we aggregate many weak learners, where each weak learner is a base classifier trained in a subspace optimally selected from a collection of random subspaces. To conduct subspace selection, we propose a new criterion, ratio information criterion (RIC), based on weighted Kullback-Leibler divergence. The theoretical analysis includes the risk and Monte-Carlo variance of the RaSE classifier, establishing the screening consistency and weak consistency of RIC, and providing an upper bound for the misclassification rate of the RaSE classifier. In addition, we show that in a high-dimensional framework, the number of random subspaces needs to be very large to guarantee that a subspace covering signals is selected. Therefore, we propose an iterative version of the RaSE algorithm and prove that under some specific conditions, a smaller number of generated random subspaces are needed to find a desirable subspace through iteration. An array of simulations under various models and real-data applications demonstrate the effectiveness and robustness of the RaSE classifier and its iterative version in terms of low misclassification rate and accurate feature ranking. The RaSE algorithm is implemented in the R package RaSEn on CRAN.
机译:我们提出了一个灵活的集合分类框架,随机子空间集合(Rase),用于稀疏分类。在RASE算法中,我们聚合了许多弱学习者,其中每个弱学习者是在从随机子空间集合最佳地选择的子空间中培训的基本分类器。为了进行子空间选择,我们提出了一种基于加权Kullback-Leibler发散的新标准,比率信息标准(RIC)。理论分析包括Rase分类器的风险和蒙特卡罗方差,建立筛选一致性和RIC的弱一致性,并为rase分类器的错误分类率提供上限。此外,我们表明,在高维框架中,随机子空间的数量需要非常大,以保证选择子空间覆盖信号。因此,我们提出了一种迭代版本的Rase算法,并证明在一些特定条件下,需要较少数量的生成的随机子空间来通过迭代找到所需的子空间。各种模型和实数据应用下的模拟阵列展示了Rase分类器的有效性和稳健性和其迭代版本的低错误分类率和准确的特征排名。 Rase算法在CRAN上的R包中实现。

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