Linked Component Analysis From Matrices to High-Order Tensors: Applications to Biomedical Data
Proceedings of the IEEE(2016)
摘要
With the increasing availability of various sensor technologies, we now have access to large amounts of multiblock (also called multiset, multirelational, or multiview) data that need to be jointly analyzed to explore their latent connections. Various component analysis methods have played an increasingly important role for the analysis of such coupled data. In this article, we first provide a brief review of existing matrix-based (two-way) component analysis methods for the joint analysis of such data with a focus on biomedical applications. Then, we discuss their important extensions and generalization to multiblock multiway (tensor) data. We show how constrained multiblock tensor decomposition methods are able to extract similar or statistically dependent common features that are shared by all blocks, by incorporating the multiway nature of data. Special emphasis is given to the flexible common and individual feature analysis of multiblock data with the aim to simultaneously extract common and individual latent components with desired properties and types of diversity. Illustrative examples are given to demonstrate their effectiveness for biomedical data analysis.
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关键词
(multilinear) independent component analysis,(multiway) blind source separation (BSS),Analysis of multirelational data,CP (CANDECOMP/PARAFAC) decompositions,constrained Tucker decompositions for multiblock data,data fusion,group and joint independent component analysis,independent vector analysis (IVA),nonnegative/sparse matrix/tensor factorizations
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