论文标题

贝叶斯网络的量子电路表示

Quantum circuit representation of Bayesian networks

论文作者

Borujeni, Sima E., Nannapaneni, Saideep, Nguyen, Nam H., Behrman, Elizabeth C., Steck, James E.

论文摘要

概率图形模型(例如贝叶斯网络)被广泛用于对随机系统进行建模,以执行各种类型的分析,例如概率预测,风险分析和系统健康监测,在大规模系统中可能在计算上变得昂贵。尽管真实量子至上的演示仍然很少见,但设法利用振幅扩增优势的量子计算应用程序与其经典对应物相比,已经显示出显着的计算益处。我们开发了一种系统的方法来设计量子电路,以表示具有两个或更多状态的节点的通用离散贝叶斯网络,其中具有两个以上状态的节点被映射到多个量子。使用旋转门表示与根节点(没有任何父节点的节点)相关的边缘概率(没有任何父节点),并且使用受控旋转门表示与非根源相关的条件概率表。使用Ancilla Qubits表示具有多个控制量子的受控旋转门。为三个例子展示了拟议的方法:一个4节点石油公司的股票预测,用于流动性风险评估的10节点网络以及一个9节点天真的贝叶斯分类器,用于破产预测。这些电路是使用Qiskit设计和模拟的,Qiskit是一个量子计算平台,可实现模拟,并且还具有在真实量子硬件上运行的能力。结果与从古典贝叶斯网络实施获得的结果进行了验证。

Probabilistic graphical models such as Bayesian networks are widely used to model stochastic systems to perform various types of analysis such as probabilistic prediction, risk analysis, and system health monitoring, which can become computationally expensive in large-scale systems. While demonstrations of true quantum supremacy remain rare, quantum computing applications managing to exploit the advantages of amplitude amplification have shown significant computational benefits when compared against their classical counterparts. We develop a systematic method for designing a quantum circuit to represent a generic discrete Bayesian network with nodes that may have two or more states, where nodes with more than two states are mapped to multiple qubits. The marginal probabilities associated with root nodes (nodes without any parent nodes) are represented using rotation gates, and the conditional probability tables associated with non-root nodes are represented using controlled rotation gates. The controlled rotation gates with more than one control qubit are represented using ancilla qubits. The proposed approach is demonstrated for three examples: a 4-node oil company stock prediction, a 10-node network for liquidity risk assessment, and a 9-node naive Bayes classifier for bankruptcy prediction. The circuits were designed and simulated using Qiskit, a quantum computing platform that enables simulations and also has the capability to run on real quantum hardware. The results were validated against those obtained from classical Bayesian network implementations.

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