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

Zh. Vychisl. Mat. Mat. Fiz., 2016 Volume 56, Number 4, Pages 507–522 (Mi zvmmf10376)

This article is cited in 17 papers

Computationally efficient algorithm for Gaussian Process regression in case of structured samples

M. Belyaevab, E. Burnaevacb, E. Kapushevab

a Institute for Information Transmission Problems, Russian Academy of Sciences
b Datadvance, Moscow
c Moscow Institute of Physics and Technology

Abstract: Surrogate modeling is widely used in many engineering problems. Data sets often have Cartesian product structure (for instance factorial design of experiments with missing points). In such case the size of the data set can be very large. Therefore, one of the most popular algorithms for approximation-Gaussian Process regression-can be hardly applied due to its computational complexity. In this paper a computationally efficient approach for constructing Gaussian Process regression in case of data sets with Cartesian product structure is presented. Efficiency is achieved by using a special structure of the data set and operations with tensors. Proposed algorithm has low computational as well as memory complexity compared to existing algorithms. In this work we also introduce a regularization procedure allowing to take into account anisotropy of the data set and avoid degeneracy of regression model.

Key words: Gaussian processes, regularization, factorial design of experiments, incomplete factorial design of experiments, operations with tensors.

UDC: 519.676

Received: 03.06.2015

DOI: 10.7868/S0044466916040190


 English version:
Computational Mathematics and Mathematical Physics, 2016, 56:4, 499–513

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