通过人工智能探索量子概率解释

Jinjun Zeng, Xiao Zhang
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引用次数: 0

摘要

关于量子测量的量子概率的不同解释,在统计学基础上的不同观点中得到了显著反映,包括集合频率理论、倾向理论和主观合理信念度。虽然有人建议,利用人工智能进行一系列逐步复杂的测试,可以获得越来越多的重要实验数据,从而约束测量问题的潜在解决方案,但目前还没有提出可行的实验设计。在这项工作中,我们利用先进的深度学习技术开发了一个新颖的实验框架,将基于神经网络的人工智能整合到贝尔测试中。这一框架对贝尔测试的隐含假设提出了挑战。我们通过模拟演示了我们的框架,并引入了三个新指标--变形多边形、平均香农熵和概率密度图来分析结果。这种方法使我们能够确定量子概率是否符合这三种解释中的任何一种或它们的混合解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring quantum probability interpretations through artificial intelligence
The varying interpretations of quantum probability governing quantum measurements are significantly reflected in divergent opinions on the foundations of statistics, including ensemble-frequency theory, propensity theory, and subjective degrees of reasonable belief. Although it has been suggested that a series of progressively sophisticated tests using artificial intelligence could yield increasingly significant experimental data to constrain potential resolutions to the measurement problem, no feasible experimental designs have yet been proposed. In this work, we utilize advanced deep learning technology to develop a novel experimental framework that integrates neural network-based artificial intelligence into a Bell test. This framework challenges the implicit assumptions underlying Bell tests. We demonstrate our framework through a simulation and introduce three new metric-morphing polygons, averaged Shannon entropy, and probability density map-to analyze the results. This approach enables us to determine whether quantum probability aligns with any one of these three interpretations or a hybrid of them.
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