Kamila Zaman, Alberto Marchisio, Muhammad Kashif, Muhammad Shafique
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引用次数: 0
摘要
投资组合优化(Portfolio Optimization,PO)是一个金融问题,旨在最大化净收益,同时最小化给定投资组合的风险。量子算法的新颖之处在于其广受赞誉的潜力和在量子计算(QC)基础架构下解决复杂问题的能力。将 QC 的适用优势用于金融行业的问题(如 PO),使我们能够使用基于量子的算法来解决这些问题,如变异量子均衡器(VQE)和量子近似优化算法(QAOA)。虽然量子在金融领域的潜力极具影响力,但量子电路的架构和组成尚未被适当定义为强大的金融框架/算法,这与目前文献中用于研究和设计开发的技术水平不符。在这项工作中,我们提出了一个新颖的可扩展框架,称为 PO-QA,用于系统地研究量子参数(如旋转块、重复次数和纠缠类型)的变化,观察它们对整体性能的微妙影响。在我们的论文中,对性能进行了测量,并根据 QAOA 和 VQE 的每种算法变化集与精确求解器(经典解)的结果优化解的类似基态能量值进行了收敛。我们的研究结果为从量子机器学习的角度理解 PO 提供了有效的启示,即与经典解的收敛性,经典解被用作基准。这项研究为确定量子电路的高效配置以解决 PO 并揭示其内在的相互关系铺平了道路。
PO-QA: A Framework for Portfolio Optimization using Quantum Algorithms
Portfolio Optimization (PO) is a financial problem aiming to maximize the net
gains while minimizing the risks in a given investment portfolio. The novelty
of Quantum algorithms lies in their acclaimed potential and capability to solve
complex problems given the underlying Quantum Computing (QC) infrastructure.
Utilizing QC's applicable strengths to the finance industry's problems, such as
PO, allows us to solve these problems using quantum-based algorithms such as
Variational Quantum Eigensolver (VQE) and Quantum Approximate Optimization
Algorithm (QAOA). While the Quantum potential for finance is highly impactful,
the architecture and composition of the quantum circuits have not yet been
properly defined as robust financial frameworks/algorithms as state of the art
in present literature for research and design development purposes. In this
work, we propose a novel scalable framework, denoted PO-QA, to systematically
investigate the variation of quantum parameters (such as rotation blocks,
repetitions, and entanglement types) to observe their subtle effect on the
overall performance. In our paper, the performance is measured and dictated by
convergence to similar ground-state energy values for resultant optimal
solutions by each algorithm variation set for QAOA and VQE to the exact
eigensolver (classical solution). Our results provide effective insights into
comprehending PO from the lens of Quantum Machine Learning in terms of
convergence to the classical solution, which is used as a benchmark. This study
paves the way for identifying efficient configurations of quantum circuits for
solving PO and unveiling their inherent inter-relationships.