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Incremental relevance sample-feature machine: A fast marginal likelihood maximization approach for joint feature selection and classification

机译:增量相关样本特征机:用于联合特征选择和分类的快速边际似然最大化方法

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摘要

The recently proposed Relevance Sample-Feature Machine (RSFM) performs joint feature selection and classification with state-of-the-art performance in terms of accuracy and sparsity. However, it suffers from high computational cost for large training sets. To accelerate its training procedure, we introduce a new variant of this algorithm named Incremental Relevance Sample-Feature Machine (IRSFM). In IRSFM, the marginal likelihood maximization approach is changed such that the model learning follows a constructive procedure (starting with an empty model, it iteratively adds or omits basis functions to construct the learned model). Our extensive experiments on various data sets and comparison with various competing algorithms demonstrate the effectiveness of the proposed IRSFM in terms of accuracy, sparsity and run-time. While the IRSFM achieves almost the same classification accuracy as the RSFM, it benefits from sparser learned model both in sample and feature domains and much less training time than RSFM especially for large data sets. (C) 2016 Elsevier Ltd. All rights reserved.
机译:最近提出的相关样本特征机(RSFM)在准确性和稀疏性方面具有最先进的性能,可以执行联合特征选择和分类。但是,对于大型训练集,它遭受了高计算成本的困扰。为了加快其训练过程,我们引入了此算法的新变种,称为增量相关样本特征机(IRSFM)。在IRSFM中,更改了边际似然最大化方法,以使模型学习遵循一个构造性的过程(从一个空模型开始,它反复添加或省略基本函数以构造学习的模型)。我们在各种数据集上进行的广泛实验以及与各种竞争算法的比较证明了IRSFM在准确性,稀疏性和运行时间方面的有效性。尽管IRSFM的分类精度几乎与RSFM相同,但它得益于样本域和特征域中稀疏的学习模型,并且比RSFM的训练时间短得多,特别是对于大型数据集。 (C)2016 Elsevier Ltd.保留所有权利。

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