2024
DOI: 10.21203/rs.3.rs-3847135/v1
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Hypergraph regularized nonnegative triple decomposition for multiway data analysis

Qingshui Liao,
Qilong Liu,
Fatimah Abdul Razak

Abstract: Tucker decomposition is widely used for image representation, data reconstruction , and machine learning tasks, but the calculation cost for updating the Tucker core is high. Bilevel form of triple decomposition (TriD) overcomes this issue by decomposing the Tucker core into three low-dimensional third-order factor tensors and plays an important role in the dimension reduction of data representation. TriD, on the other hand, is incapable of precisely encoding similarity relationships for tensor data with a com… Show more

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