论文标题
量子贝叶斯决策*
Quantum Bayesian decision-making*
论文作者
论文摘要
作为对随机变量的依赖图图的紧凑型表示,以及在不确定性存在下建模和推理的工具,贝叶斯网络对于人工智能而言非常重要,可以结合域知识,捕获因果关系或从不完整的数据集中学习。在经典环境中,贝叶斯推断被称为NP硬质问题,它是一类值得在量子框架中探索的算法。本文探讨了这样的研究方向,并通过在纠缠式配置中明智地使用实用程序功能来改善先前的建议。它提出了一个完全量子的机械决策过程,具有可靠的计算优势。讨论了Qiskit(基于Python的IBM Q机器基于Python的程序开发套件)中的原型实现,以作为概念验证。
As a compact representation of joint probability distributions over a dependence graph of random variables, and a tool for modelling and reasoning in the presence of uncertainty, Bayesian networks are of great importance for artificial intelligence to combine domain knowledge, capture causal relationships, or learn from incomplete datasets. Known as a NP-hard problem in a classical setting, Bayesian inference pops up as a class of algorithms worth to explore in a quantum framework. This paper explores such a research direction and improves on previous proposals by a judicious use of the utility function in an entangled configuration. It proposes a completely quantum mechanical decision-making process with a proven computational advantage. A prototype implementation in Qiskit (a Python-based program development kit for the IBM Q machine) is discussed as a proof-of-concept.