Quantum SDP-Solvers: Better Upper and Lower Bounds

Joran van Apeldoorn, A. Gilyén, S. Gribling, R. D. Wolf
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引用次数: 146

Abstract

Brandão and Svore recently gave quantum algorithms for approximately solving semidefinite programs, which in some regimes are faster than the best-possible classical algorithms in terms of the dimension n of the problem and the number m of constraints, but worse in terms of various other parameters. In this paper we improve their algorithms in several ways, getting better dependence on those other parameters. To this end we develop new techniques for quantum algorithms, for instance a general way to efficiently implement smooth functions of sparse Hamiltonians, and a generalized minimum-finding procedure.We also show limits on this approach to quantum SDP-solvers, for instance for combinatorial optimizations problems that have a lot of symmetry. Finally, we prove some general lower bounds showing that in the worst case, the complexity of every quantum LP-solver (and hence also SDP-solver) has to scale linearly with mn when m is approximately n, which is the same as classical.
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量子sdp求解:更好的上界和下界
Brandão和Svore最近给出了近似求解半确定程序的量子算法,在某些情况下,就问题的维数n和约束的数量m而言,量子算法比最好的经典算法更快,但就各种其他参数而言,量子算法更差。在本文中,我们从几个方面改进了它们的算法,使它们更好地依赖于其他参数。为此,我们开发了量子算法的新技术,例如一种有效实现稀疏哈密顿函数的一般方法,以及一种广义的最小值查找过程。我们还展示了这种方法在量子sdp求解中的局限性,例如,对于具有大量对称性的组合优化问题。最后,我们证明了一些一般的下界,表明在最坏的情况下,当m近似于n时,每个量子lp -解算器(因此也是sdp -解算器)的复杂性必须与mn线性扩展,这与经典相同。
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