Quantum Algorithms for Portfolio Optimization

Iordanis Kerenidis, A. Prakash, Dániel Szilágyi
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引用次数: 31

Abstract

We develop the first quantum algorithm for the constrained portfolio optimization problem. The algorithm has running time Õ (n√r ζk/δ2 log (1/ϵ)), where r is the number of positivity and budget constraints, n is the number of assets in the portfolio, ϵ the desired precision, and δ, κ, ζ are problem-dependent parameters related to the well-conditioning of the intermediate solutions. If only a moderately accurate solution is required, our quantum algorithm can achieve a polynomial speedup over the best classical algorithms with complexity Õ (√rnω log(1/ϵ)), where ω is the matrix multiplication exponent that has a theoretical value of around 2.373, but is closer to 3 in practice. We also provide some experiments to bound the problem-dependent factors arising in the running time of the quantum algorithm, and these experiments suggest that for most instances the quantum algorithm can potentially achieve an O(n) speedup over its classical counterpart.
投资组合优化的量子算法
提出了约束投资组合优化问题的第一个量子算法。该算法的运行时间为Õ (n√r ζk/δ2 log (1/ λ)),其中r是正约束和预算约束的数量,n是投资组合中的资产数量,λ是期望的精度,δ, κ, ζ是与中间解的良好调节相关的问题依赖参数。如果只需要一个中等精确的解决方案,我们的量子算法可以实现优于最佳经典算法的多项式加速,其复杂度为Õ(√rnω log(1/ λ)),其中ω是矩阵乘法指数,理论值约为2.373,但在实践中更接近3。我们还提供了一些实验来约束量子算法运行时间中出现的问题相关因素,这些实验表明,在大多数情况下,量子算法可能比经典算法实现O(n)的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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