639 research outputs found
Faster Sparse Matrix Inversion and Rank Computation in Finite Fields
We improve the current best running time value to invert sparse matrices over
finite fields, lowering it to an expected time for the
current values of fast rectangular matrix multiplication. We achieve the same
running time for the computation of the rank and nullspace of a sparse matrix
over a finite field. This improvement relies on two key techniques. First, we
adopt the decomposition of an arbitrary matrix into block Krylov and Hankel
matrices from Eberly et al. (ISSAC 2007). Second, we show how to recover the
explicit inverse of a block Hankel matrix using low displacement rank
techniques for structured matrices and fast rectangular matrix multiplication
algorithms. We generalize our inversion method to block structured matrices
with other displacement operators and strengthen the best known upper bounds
for explicit inversion of block Toeplitz-like and block Hankel-like matrices,
as well as for explicit inversion of block Vandermonde-like matrices with
structured blocks. As a further application, we improve the complexity of
several algorithms in topological data analysis and in finite group theory
Faster Sparse Matrix Inversion and Rank Computation in Finite Fields
We improve the current best running time value to invert sparse matrices over finite fields, lowering it to an expected O(n^{2.2131}) time for the current values of fast rectangular matrix multiplication. We achieve the same running time for the computation of the rank and nullspace of a sparse matrix over a finite field. This improvement relies on two key techniques. First, we adopt the decomposition of an arbitrary matrix into block Krylov and Hankel matrices from Eberly et al. (ISSAC 2007). Second, we show how to recover the explicit inverse of a block Hankel matrix using low displacement rank techniques for structured matrices and fast rectangular matrix multiplication algorithms. We generalize our inversion method to block structured matrices with other displacement operators and strengthen the best known upper bounds for explicit inversion of block Toeplitz-like and block Hankel-like matrices, as well as for explicit inversion of block Vandermonde-like matrices with structured blocks. As a further application, we improve the complexity of several algorithms in topological data analysis and in finite group theory
A weakly stable algorithm for general Toeplitz systems
We show that a fast algorithm for the QR factorization of a Toeplitz or
Hankel matrix A is weakly stable in the sense that R^T.R is close to A^T.A.
Thus, when the algorithm is used to solve the semi-normal equations R^T.Rx =
A^Tb, we obtain a weakly stable method for the solution of a nonsingular
Toeplitz or Hankel linear system Ax = b. The algorithm also applies to the
solution of the full-rank Toeplitz or Hankel least squares problem.Comment: 17 pages. An old Technical Report with postscript added. For further
details, see http://wwwmaths.anu.edu.au/~brent/pub/pub143.htm
Fast Algorithms for Displacement and Low-Rank Structured Matrices
This tutorial provides an introduction to the development of fast matrix
algorithms based on the notions of displacement and various low-rank
structures
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