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JOURNALS // Zhurnal Vychislitel'noi Matematiki i Matematicheskoi Fiziki // Archive

Zh. Vychisl. Mat. Mat. Fiz., 2021 Volume 61, Number 5, Pages 845–864 (Mi zvmmf11242)

General numerical methods

Structuring data with block term decomposition: decomposition of joint tensors and variational block term decomposition as a parametrized mixture distribution model

I. V. Oseledetsab, P. V. Kharyukabc

a Skolkovo Institute of Science and Technology (Skoltech), 121205, Moscow, Russia
b Marchuk Institute of Numerical Mathematics, Russian Academy of Sciences, 119333, Moscow, Russia
c Faculty of Computational Mathematics and Cybernetics, Lomonosov Moscow State University, 119991, Moscow, Russia

Abstract: The idea of using tensor decompositions as a parametric model for group data analysis is developed. Two models (deterministic and probabilistic) based on block term decomposition are presented using various formats of terms. The relationship between block term decomposition and mixtures of continuous latent probabilistic models is established; specifically, a mixture distribution model with a structured representation is constructed relying on block term decomposition. The models are tested as applied to the problem of clustering a set of color images and brain electrical activity data. The results show that the proposed approaches are capable of extracting a relevant individual component of the data.

Key words: group data analysis, block term decomposition, machine learning, component analysis, mixture distribution model.

UDC: 519.6

Received: 24.12.2020
Revised: 24.12.2020
Accepted: 14.01.2021

DOI: 10.31857/S004446692105015X


 English version:
Computational Mathematics and Mathematical Physics, 2021, 61:5, 816–835

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© Steklov Math. Inst. of RAS, 2024