2022
DOI: 10.1002/nla.2443
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Nonnegative canonical tensor decomposition with linear constraints: nnCANDELINC

Abstract: There is an emerging interest for tensor factorization applications in big-data analytics and machine learning. To speed up the factorization of extra-large datasets, organized in multidimensional arrays (also known as tensors), easy to compute compression-based tensor representations, such as, Tucker and tensor train formats, are used to approximate the initial large-tensor. Further, tensor factorization is used to extract latent features that can facilitate discoveries of new mechanisms and signatures hidden… Show more

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Cited by 2 publications
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References 33 publications
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