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首页> 外文期刊>Cybernetics, IEEE Transactions on >Joint Embedding Learning and Low-Rank Approximation: A Framework for Incomplete Multiview Learning
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Joint Embedding Learning and Low-Rank Approximation: A Framework for Incomplete Multiview Learning

机译:联合嵌入学习和低秩近似:不完整多视图学习的框架

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摘要

In real-world applications, not all instances in the multiview data are fully represented. To deal with incomplete data, incomplete multiview learning (IML) rises. In this article, we propose the joint embedding learning and low-rank approximation (JELLA) framework for IML. The JELLA framework approximates the incomplete data by a set of low-rank matrices and learns a full and common embedding by linear transformation. Several existing IML methods can be unified as special cases of the framework. More interestingly, some linear transformation-based complete multiview methods can be adapted to IML directly with the guidance of the framework. Thus, the JELLA framework improves the efficiency of processing incomplete multiview data, and bridges the gap between complete multiview learning and IML. Moreover, the JELLA framework can provide guidance for developing new algorithms. For illustration, within the framework, we propose the IML with the block-diagonal representation (IML-BDR) method. Assuming that the sampled examples have an approximate linear subspace structure, IML-BDR uses the block-diagonal structure prior to learning the full embedding, which would lead to more correct clustering. A convergent alternating iterative algorithm with the successive over-relaxation optimization technique is devised for optimization. The experimental results on various datasets demonstrate the effectiveness of IML-BDR.
机译:在现实世界应用中,并非多视图数据中的所有实例都完全表示。要处理不完整的数据,不完整的多视图学习(IML)升起。在本文中,我们提出了联合嵌入学习和低级近似(果酱)框架的IML。果酱框架通过一组低级矩阵近似于不完整的数据,并通过线性变换来学习完整且共同的嵌入。几种现有的IML方法可以统一作为框架的特殊情况。更有意义地,一些基于线性变换的完整多视图方法可以直接与框架的指导直接调整到IML。因此,果酱框架提高了处理不完整的多视图数据的效率,并弥合了完整的多视图学习和IML之间的差距。此外,果酱框架可以为开发新算法提供指导。有关插图,在框架内,我们提出了具有块对角线表示(IML-BDR)方法的IML。假设采样的示例具有近似的线性子空间结构,IML-BDR在学习完整嵌入之前使用块对角线结构,这将导致更正确的聚类。设计了具有连续过度放松优化技术的收敛交替迭代算法进行优化。各种数据集的实验结果证明了IML-BDR的有效性。

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