Conference Proceedings
SCED: A general framework for sparse tensor decomposition with constraints and elementwise dynamic learning
S Zhou, SM Erfani, J Bailey
Proceedings IEEE International Conference on Data Mining Icdm | IEEE | Published : 2017
DOI: 10.1109/ICDM.2017.77
Abstract
CANDECOMP/PARAFAC Decomposition (CPD) is one of the most popular tensor decomposition methods that has been extensively studied and widely applied. In recent years, sparse tensors that contain a huge portion of zeros but a limited number of non-zeros have attracted increasing interest. Existing techniques are not directly applicable to sparse tensors, since they mainly target dense ones and usually have poor efficiency. Additionally, specific issues also arise for sparse tensors, depending on different data sources and applications: the role of zero entries can be different; incorporating constraints like non-negativity and sparseness might be necessary; the ability to learn on-the-fly is a ..
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