Backtesting Quantum Computing Algorithms for Portfolio Optimization

Ginés Carrascal;Paula Hernamperez;Guillermo Botella;Alberto del Barrio
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Abstract

In portfolio theory, the investment portfolio optimization problem is one of those problems whose complexity grows exponentially with the number of assets. By backtesting classical and quantum computing algorithms, we can get a sense of how these algorithms might perform in the real world. This work establishes a methodology for backtesting classical and quantum algorithms in equivalent conditions, and uses it to explore four quantum and three classical computing algorithms for portfolio optimization and compares the results. Running 10 000 experiments on equivalent conditions we find that quantum can match or slightly outperform classical results, showing a better escalability trend. To the best of our knowledge, this is the first work that performs a systematic backtesting comparison of classical and quantum portfolio optimization algorithms. In this work, we also analyze in more detail the variational quantum eigensolver algorithm, applied to solve the portfolio optimization problem, running on simulators and real quantum computers from IBM. The benefits and drawbacks of backtesting are discussed, as well as some of the challenges involved in using real quantum computers of more than 100 qubits. Results show quantum algorithms can be competitive with classical ones, with the advantage of being able to handle a large number of assets in a reasonable time on a future larger quantum computer.
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量子计算算法用于投资组合优化的回溯测试
在投资组合理论中,投资组合优化问题是复杂度随资产数量呈指数增长的问题之一。通过对经典和量子计算算法进行回溯测试,我们可以了解这些算法在现实世界中的表现。这项研究建立了在等效条件下对经典算法和量子算法进行回溯测试的方法,并利用这种方法探索了用于投资组合优化的四种量子计算算法和三种经典计算算法,并对结果进行了比较。我们在同等条件下进行了 10,000 次实验,发现量子算法的结果可以与经典算法相媲美或略胜一筹,并呈现出更好的可升级趋势。据我们所知,这是第一项对经典和量子投资组合优化算法进行系统回溯测试比较的工作。在这项工作中,我们还更详细地分析了应用于解决投资组合优化问题的变分量子eigensolver算法,该算法在模拟器和IBM公司的真实量子计算机上运行。讨论了回溯测试的好处和缺点,以及使用超过 100 量子位的真实量子计算机所面临的一些挑战。结果表明,量子算法可以与经典算法竞争,其优势在于能够在未来更大的量子计算机上以合理的时间处理大量资产。
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