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Canonical Correlation Analysis for Multiview Semisupervised Feature Extraction

机译:多视图半监督特征提取的典型相关分析

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Hotelling's Canonical Correlation Analysis (CCA) works with two sets of related variables, also called views, and its goal is to find their linear projections with maximal mutual correlation. CCA is most suitable for unsu-pervised feature extraction when given two views but it has been also long known that in supervised learning when there is only a single view of data given, the supervision signal (class-labels) can be given to CCA as the second view and CCA simply reduces to Fisher's Linear Discriminant Analysis (LDA). However, it is unclear how to use this equivalence for extracting features from multiview data in semisupervised setting (i.e. what modification to the CCA mechanism could incorporate the class-labels along with the two views of the data when labels of some samples are unknown). In this paper, a CCA-based method supplemented by the essence of LDA is proposed for semi-supervised feature extraction from multiview data.
机译:Hotelling的规范相关分析(CCA)使用两组相关变量(也称为视图)进行工作,其目标是找到具有最大互相关的线性投影。 CCA最适合在给出两种视图的情况下进行非监督特征提取,但众所周知,在监督学习中,如果仅提供单个数据视图,则可以向CCA提供监督信号(类标签),如下所示:第二种观点,CCA只是简化为Fisher的线性判别分析(LDA)。但是,目前尚不清楚如何在半监督设置下使用这种等效性从多视图数据中提取特征(即,当某些样本的标签未知时,对CCA机制的哪些修改可以将类标签与数据的两个视图合并在一起)。本文提出了一种基于LCA本质的,基于CCA的方法,用于从多视图数据中进行半监督特征提取。

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