Approximating Orthogonal Matrices with Effective Givens Factorization
We analyze effective approximation of unitary matrices. In our formulation, a unitary matrix is represented as a product of rotations in two-dimensional subspaces, so-called Givens rotations. Instead of the quadratic dimension dependence when applying a dense matrix, applying such an approximation s...
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Zusammenfassung: | We analyze effective approximation of unitary matrices. In our formulation, a
unitary matrix is represented as a product of rotations in two-dimensional
subspaces, so-called Givens rotations. Instead of the quadratic dimension
dependence when applying a dense matrix, applying such an approximation scales
with the number factors, each of which can be implemented efficiently.
Consequently, in settings where an approximation is once computed and then
applied many times, such a representation becomes advantageous. Although
effective Givens factorization is not possible for generic unitary operators,
we show that minimizing a sparsity-inducing objective with a coordinate descent
algorithm on the unitary group yields good factorizations for structured
matrices. Canonical applications of such a setup are orthogonal basis
transforms. We demonstrate numerical results of approximating the graph Fourier
transform, which is the matrix obtained when diagonalizing a graph Laplacian. |
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DOI: | 10.48550/arxiv.1905.05796 |