In this short note, I derive the Bell-CHSH inequalities as an elementary result in the present-day theory of statistical causality based on graphical models or Bayes' nets, defined in terms of DAGs (Directed Acyclic Graphs) representing direct statistical causal influences between a number of observed and unobserved random variables. I show how spatio-temporal constraints in loophole-free Bell experiments, and natural classical statistical causality considerations, lead to Bell's notion of local hidden variables, and thence to the CHSH inequalities. The word "local" applies to the way that the chosen settings influence the observed outcomes. The case of contextual setting-dependent hidden variables (thought of as being located in the measurement devices and dependent on the measurement settings) is automatically covered, despite recent claims that Bell's conclusions can be circumvented in this way.
翻译:在这篇简短的笔记中,我通过基于图形模型或贝叶斯网络的当前统计因果理论,用由表示多个观察随机变量和未观察随机变量之间直接统计因果影响的DAG(有向无环图)定义,导出了贝尔-CHSH不等式作为初等结果。我展示了漏洞自由贝尔实验中的时空限制和自然经典统计因果性考虑如何导致贝尔的局部隐藏变量概念,从而导出CHSH不等式。单词“局部”适用于所选设置对观察结果的影响方式。自然在测量设备中且与测量设置相关的语境设置依赖隐藏变量的情况(认为位于测量设备中)也会自动被包含在内,尽管最近有人声称可以用这种方法规避贝尔的结论。