Treffer: Tensor Numerical Methods: Actual Theory and Recent Applications

Title:
Tensor Numerical Methods: Actual Theory and Recent Applications
Source:
Computational Methods in Applied Mathematics ; volume 19, issue 1, page 1-4 ; ISSN 1609-9389 1609-4840
Publisher Information:
Walter de Gruyter GmbH
Publication Year:
2018
Document Type:
Fachzeitschrift article in journal/newspaper
Language:
English
DOI:
10.1515/cmam-2018-0014
DOI:
10.1515/cmam-2018-0014/xml
DOI:
10.1515/cmam-2018-0014/pdf
Accession Number:
edsbas.C138F6F2
Database:
BASE

Weitere Informationen

Most important computational problems nowadays are those related to processing of the large data sets and to numerical solution of the high-dimensional integral-differential equations. These problems arise in numerical modeling in quantum chemistry, material science, and multiparticle dynamics, as well as in machine learning, computer simulation of stochastic processes and many other applications related to big data analysis. Modern tensor numerical methods enable solution of the multidimensional partial differential equations (PDE) in {\mathbb{R}^{d}} by reducing them to one-dimensional calculations. Thus, they allow to avoid the so-called “curse of dimensionality”, i.e. exponential growth of the computational complexity in the dimension size d , in the course of numerical solution of high-dimensional problems. At present, both tensor numerical methods and multilinear algebra of big data continue to expand actively to further theoretical and applied research topics. This issue of CMAM is devoted to the recent developments in the theory of tensor numerical methods and their applications in scientific computing and data analysis. Current activities in this emerging field on the effective numerical modeling of temporal and stationary multidimensional PDEs and beyond are presented in the following ten articles, and some future trends are highlighted therein.