论文标题

现象学因果关系

Phenomenological Causality

论文作者

Janzing, Dominik, Mejia, Sergio Hernan Garrido

论文摘要

关于现实生活中因果关系的讨论通常考虑因果关系定义的变量,因为对各个变量的干预措施的概念晦涩难懂。询问“什么有资格成为对变量X'进行干预的行动提出了一个问题,即该动作是否仅通过X或直接影响所有其他变量,这隐含地指因果模型。 为了避免这种已知的循环性,我们提出了一个“现象学因果关系”的概念,其基本概念是一组基本行动。然后定义了因果结构,以使基本动作仅在一个节点上改变因果机制(例如,马尔可夫分解中的因果条件之一)。这样,独立机制的原理成为因果关系是一种更抽象现象的域中因果结构的定义特性,而不是依靠有形物体之间的紧密因果关系的客观事实。我们描述了针对玩具和假设的现实世界的因果关系的这种现象学方法,并认为当所考虑的系统与控制基本动作的其他变量相互作用时,它与因果马尔可夫条件一致。

Discussions on causal relations in real life often consider variables for which the definition of causality is unclear since the notion of interventions on the respective variables is obscure. Asking 'what qualifies an action for being an intervention on the variable X' raises the question whether the action impacted all other variables only through X or directly, which implicitly refers to a causal model. To avoid this known circularity, we instead suggest a notion of 'phenomenological causality' whose basic concept is a set of elementary actions. Then the causal structure is defined such that elementary actions change only the causal mechanism at one node (e.g. one of the causal conditionals in the Markov factorization). This way, the Principle of Independent Mechanisms becomes the defining property of causal structure in domains where causality is a more abstract phenomenon rather than being an objective fact relying on hard-wired causal links between tangible objects. We describe this phenomenological approach to causality for toy and hypothetical real-world examples and argue that it is consistent with the causal Markov condition when the system under consideration interacts with other variables that control the elementary actions.

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