Quantum Time-Space Tradeoffs for Matrix Problems
Paul Beame, Niels Kornerup, Michael Whitmeyer

TL;DR
This paper establishes quantum time-space tradeoffs for matrix problems, showing that quantum algorithms do not outperform classical ones in terms of asymptotic complexity for key linear algebra tasks.
Contribution
It extends classical time-space tradeoff bounds to quantum algorithms for matrix problems, demonstrating no asymptotic quantum advantage in these scenarios.
Findings
Quantum algorithms require similar time-space resources as classical algorithms for matrix-vector multiplication.
Quantum lower bounds for matrix multiplication match classical bounds, indicating no asymptotic quantum speedup.
Improved bounds for Boolean matrix multiplication using a new coloring argument and bucketing method.
Abstract
We consider the time and space required for quantum computers to solve a wide variety of problems involving matrices, many of which have only been analyzed classically in prior work. Our main results show that for a range of linear algebra problems -- including matrix-vector product, matrix inversion, matrix multiplication and powering -- existing classical time-space tradeoffs, several of which are tight for every space bound, also apply to quantum algorithms. For example, for almost all matrices , including the discrete Fourier transform (DFT) matrix, we prove that quantum circuits with at most input queries and qubits of memory require to compute matrix-vector product for . We similarly prove that matrix multiplication for binary matrices requires . Because many of our lower bounds match…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Parallel Computing and Optimization Techniques
