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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A novel ensemble construction method for multi-view data using random cross-view correlation between within-class examples
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A novel ensemble construction method for multi-view data using random cross-view correlation between within-class examples

机译:使用类内示例之间的随机交叉相关性的多视图数据集成构建方法

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摘要

Correlated information between multiple views can provide useful information for building robust classifiers. One way to extract correlated features from different views is using canonical correlation analysis (CCA). However, CCA is an unsupervised method and can not preserve discriminant information in feature extraction. In this paper, we first incorporate discriminant information into CCA by using random cross-view correlations between within-class examples. Because of the random property, we can construct a lot of feature extractors based on CCA and random correlation. So furthermore, we fuse those feature extractors and propose a novel method called random correlation ensemble (RCE) for multi-view ensemble learning. We compare RCE with existing multi-view feature extraction methods including CCA and discriminant CCA (DCCA) which use all cross-view correlations between within-class examples, as well as the trivial ensembles of CCA and DCCA which adopt standard bagging and boosting strategies for ensemble learning. Experimental results on several multi-view data sets validate the effectiveness of the proposed method.
机译:多个视图之间的相关信息可以为构建健壮的分类器提供有用的信息。从不同视图中提取相关特征的一种方法是使用规范相关分析(CCA)。但是,CCA是一种不受监督的方法,无法在特征提取中保留可区分的信息。在本文中,我们首先通过使用类内示例之间的随机交叉视图相关性将判别信息合并到CCA中。由于具有随机性,我们可以基于CCA和随机相关性构造许多特征提取器。因此,此外,我们融合了这些特征提取器,并提出了一种用于多视图集成学习的称为随机相关集成(RCE)的新方法。我们将RCE与现有的多视图特征提取方法进行了比较,包括CCA和判别CCA(DCCA),它们使用类内示例之间的所有交叉相关性,以及采用标准打包和增强策略的CCA和DCCA的小集合。合奏学习。在多个多视图数据集上的实验结果验证了该方法的有效性。

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