Affiliation:
1. School of Mathematics, University of Bristol, Bristol, UK
2. School of Mathematics, Bristol, UK, University of Bristol and Phasecraft Ltd., Bristol, UK
Abstract
We establish an improved classical algorithm for solving linear systems in a model analogous to the QRAM that is used by quantum linear solvers. Precisely, for the linear system
\( A{\bf x}= {\bf b} \)
, we show that there is a classical algorithm that outputs a data structure for
\( {\bf x} \)
allowing sampling and querying to the entries, where
\( {\bf x} \)
is such that
\( \Vert {\bf x}- A^{+}{\bf b}\Vert \le \epsilon \Vert A^{+}{\bf b}\Vert \)
. This output can be viewed as a classical analogue to the output of quantum linear solvers. The complexity of our algorithm is
\( \widetilde{O}(\kappa _F^6 \kappa ^2/\epsilon ^2) \)
, where
\( \kappa _F = \Vert A\Vert _F\Vert A^{+}\Vert \)
and
\( \kappa = \Vert A\Vert \Vert A^{+}\Vert \)
. This improves the previous best algorithm [Gilyén, Song and Tang, arXiv:2009.07268] of complexity
\( \widetilde{O}(\kappa _F^6 \kappa ^6/\epsilon ^4) \)
. Our algorithm is based on the randomized Kaczmarz method, which is a particular case of stochastic gradient descent. We also find that when
A
is row sparse, this method already returns an approximate solution
\( {\bf x} \)
in time
\( \widetilde{O}(\kappa _F^2) \)
, while the best quantum algorithm known returns
\( | {\bf x} \rangle \)
in time
\( \widetilde{O}(\kappa _F) \)
when
A
is stored in the QRAM data structure. As a result, assuming access to QRAM and if
A
is row sparse, the speedup based on current quantum algorithms is quadratic.
Funder
QuantERA ERA-NET Cofund in Quantum Technologies implemented within the European Union’s Horizon 2020 Programme
EPSRC
European Research Council
European Union’s Horizon 2020
Publisher
Association for Computing Machinery (ACM)
Reference48 articles.
1. Quantum-inspired algorithms in practice
2. Quantum machine learning
3. Block Kaczmarz Method with Inequalities
4. Andrzej Cegielski. 2021. Bibliography on the Kaczmarz method. Retrieved from http://staff.uz.zgora.pl/acegiels/Publications-Kaczmarz-method.pdf.
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