A Quantum Interior Point Method for LPs and SDPs (1808.09266v1)
Abstract: We present a quantum interior point method with worst case running time $\widetilde{O}(\frac{n{2.5}}{\xi{2}} \mu \kappa3 \log (1/\epsilon))$ for SDPs and $\widetilde{O}(\frac{n{1.5}}{\xi{2}} \mu \kappa3 \log (1/\epsilon))$ for LPs, where the output of our algorithm is a pair of matrices $(S,Y)$ that are $\epsilon$-optimal $\xi$-approximate SDP solutions. The factor $\mu$ is at most $\sqrt{2}n$ for SDPs and $\sqrt{2n}$ for LP's, and $\kappa$ is an upper bound on the condition number of the intermediate solution matrices. For the case where the intermediate matrices for the interior point method are well conditioned, our method provides a polynomial speedup over the best known classical SDP solvers and interior point based LP solvers, which have a worst case running time of $O(n{6})$ and $O(n{3.5})$ respectively. Our results build upon recently developed techniques for quantum linear algebra and pave the way for the development of quantum algorithms for a variety of applications in optimization and machine learning.