Multidimensional butterfly factorization |
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Authors: | Yingzhou Li Haizhao Yang Lexing Ying |
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Affiliation: | 1. Department of Mathematics, Stanford University, United States;2. ICME, Stanford University, United States;3. Department of Mathematics, Duke University, United States |
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Abstract: | ![]() This paper introduces the multidimensional butterfly factorization as a data-sparse representation of multidimensional kernel matrices that satisfy the complementary low-rank property. This factorization approximates such a kernel matrix of size with a product of sparse matrices, each of which contains nonzero entries. We also propose efficient algorithms for constructing this factorization when either (i) a fast algorithm for applying the kernel matrix and its adjoint is available or (ii) every entry of the kernel matrix can be evaluated in operations. For the kernel matrices of multidimensional Fourier integral operators, for which the complementary low-rank property is not satisfied due to a singularity at the origin, we extend this factorization by combining it with either a polar coordinate transformation or a multiscale decomposition of the integration domain to overcome the singularity. Numerical results are provided to demonstrate the efficiency of the proposed algorithms. |
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Keywords: | 44A55 65R10 65T50 Data-sparse matrix factorization Operator compression Butterfly algorithm Randomized algorithm Fourier integral operators |
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