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What Caused What? A Quantitative Account of Actual Causation Using Dynamical Causal Networks

机译:是什么造成的?使用动态因果网络的实际因果关系的定量叙述

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摘要

Actual causation is concerned with the question: “What caused what?” Consider a transition between two states within a system of interacting elements, such as an artificial neural network, or a biological brain circuit. Which combination of synapses caused the neuron to fire? Which image features caused the classifier to misinterpret the picture? Even detailed knowledge of the system’s causal network, its elements, their states, connectivity, and dynamics does not automatically provide a straightforward answer to the “what caused what?” question. Counterfactual accounts of actual causation, based on graphical models paired with system interventions, have demonstrated initial success in addressing specific problem cases, in line with intuitive causal judgments. Here, we start from a set of basic requirements for causation (realization, composition, information, integration, and exclusion) and develop a rigorous, quantitative account of actual causation, that is generally applicable to discrete dynamical systems. We present a formal framework to evaluate these causal requirements based on system interventions and partitions, which considers all counterfactuals of a state transition. This framework is used to provide a complete causal account of the transition by identifying and quantifying the strength of all actual causes and effects linking the two consecutive system states. Finally, we examine several exemplary cases and paradoxes of causation and show that they can be illuminated by the proposed framework for quantifying actual causation.
机译:实际因果关系涉及问题:“是什么造成的?”考虑两个状态在交互元件的系统内的过渡,例如人工神经网络或生物脑电路。哪种突触组合导致神经元发射?哪个图像功能导致分类器误解图片?甚至详细了解系统的因果网络,其元素,他们的州,连接和动态并没有自动为“是什么造成的?”自动提供直接的答案题。基于与系统干预配对的图形模型的实际因果关系的反事实账户在解决特定问题案件中,符合直观的因果判断,展示了初步成功。在这里,我们从一系列基本要求的因果关系(实现,组成,信息,集成和排除),并制定严格的,定量的实际因果处理,这通常适用于离散动力系统。我们提出了一个正式的框架,以评估基于系统干预和分区的这些因果要求,该分区考虑了国家过渡的所有反事实。该框架通过识别和量化链接两个连续系统状态的所有实际原因和效果来提供转换的完整因果关系。最后,我们检查了几种示例性案例和因果关系的悖论,并表明它们可以通过所提出的框架来照明,用于量化实际因果。

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