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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Multiview Concept Learning Via Deep Matrix Factorization
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Multiview Concept Learning Via Deep Matrix Factorization

机译:通过深矩阵分解的多视图概念学习

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Multiview representation learning (MVRL) leverages information from multiple views to obtain a common representation summarizing the consistency and complementarity in multiview data. Most previous matrix factorization-based MVRL methods are shallow models that neglect the complex hierarchical information. The recently proposed deep multiview factorization models cannot explicitly capture consistency and complementarity in multiview data. We present the deep multiview concept learning (DMCL) method, which hierarchically factorizes the multiview data, and tries to explicitly model consistent and complementary information and capture semantic structures at the highest abstraction level. We explore two variants of the DMCL framework, DMCL-L and DMCL-N, with respectively linear/nonlinear transformations between adjacent layers. We propose two block coordinate descent-based optimization methods for DMCL-L and DMCL-N. We verify the effectiveness of DMCL on three real-world data sets for both clustering and classification tasks.
机译:多视图表示学习(MVRL)利用来自多个视图的信息来获得总结多视图数据中的一致性和互补性的公共表示。基于最先前的基于矩阵分子的MVRL方法是忽略复分层信息的浅模型。最近提出的深度多视图分解模型不能明确捕获多视图数据中的一致性和互补性。我们介绍了深度多视图概念学习(DMCL)方法,它们分层地构建了多视图数据,并试图在最高抽象级别下显式建模一致和互补信息和捕获语义结构。我们探索DMCL框架,DMCL-L和DMCL-N的两个变体,分别在相邻层之间分别是线性/非线性变换。我们提出了两个块坐标血管下降的基于DMCL-L和DMCL-N的优化方法。我们验证了DMCL对群集和分类任务的三个真实数据集的有效性。

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