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Error Bounds for Low-Rank Approximations of the First Exponential Integral Kernel
Authors:A L Nunes  M Ahues
Institution:1. Instituto Politécnico do Cávado e do Ave , Barcelos , Portugal;2. Institut Camille Jordan, UMR CNRS 5208 , Université Jean Monnet, Saint-Etienne, Membre d'Université de Lyon , Lyon , France
Abstract:A hierarchical matrix is an efficient data-sparse representation of a matrix, especially useful for large dimensional problems. It consists of low-rank subblocks leading to low memory requirements as well as inexpensive computational costs. In this work, we discuss the use of the hierarchical matrix technique in the numerical solution of a large scale eigenvalue problem arising from a finite rank discretization of an integral operator. The operator is of convolution type, it is defined through the first exponential-integral function and, hence, it is weakly singular. We develop analytical expressions for the approximate degenerate kernels and deduce error upper bounds for these approximations. Some computational results illustrating the efficiency and robustness of the approach are presented.
Keywords:Hierarchical matrices  Integral operators  Projection approximation  Spectral computations  Weakly singular kernel
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