论文标题
使用量子计算提高支付系统的效率
Improving the Efficiency of Payments Systems Using Quantum Computing
论文作者
论文摘要
高价值支付系统(HVPSS)通常是流动性密集的,因为付款请求是不可分割的,并且总体上解决。找到应处理付款以最大化这些系统的流动性效率的正确顺序是$ NP $ - hard组合优化问题,量子算法可能能够以有意义的规模解决。我们开发了一种算法,并将其运行在混合量子退火求解器上,以找到付款的订购,这些付款减少了所需的系统流动性量,而无需大大增加付款延迟。尽管当今量子计算机的尺寸和速度有局限性,但使用30天的交易数据样本将其应用于加拿大HVP时,我们的算法可提供可量化的效率提高。通过在进入队列时重新订购每批70款付款,我们平均每天的流动性节省了2.4亿美元,结算延迟约为90秒。在样本中的几天中,流动性节省超过10亿美元。该算法可以将其作为集中预处理程序纳入现有的HVP,而无需对其风险管理模型进行基本变化。
High-value payment systems (HVPSs) are typically liquidity-intensive as the payment requests are indivisible and settled on a gross basis. Finding the right order in which payments should be processed to maximize the liquidity efficiency of these systems is an $NP$-hard combinatorial optimization problem, which quantum algorithms may be able to tackle at meaningful scales. We developed an algorithm and ran it on a hybrid quantum annealing solver to find an ordering of payments that reduced the amount of system liquidity necessary without substantially increasing payment delays. Despite the limitations in size and speed of today's quantum computers, our algorithm provided quantifiable efficiency improvements when applied to the Canadian HVPS using a 30-day sample of transaction data. By reordering each batch of 70 payments as they entered the queue, we achieved an average of C\$240 million in daily liquidity savings, with a settlement delay of approximately 90 seconds. For a few days in the sample, the liquidity savings exceeded C\$1 billion. This algorithm could be incorporated as a centralized preprocessor into existing HVPS without entailing a fundamental change to their risk management models.