How Artificial Intelligence Leads to Knowledge Why: An Inquiry Inspired by Aristotle's Posterior Analytics
Guus Eelink, Kilian Rückschloß and Felix Weitkämper
贝叶斯网络和因果模型提供了处理有关外部干预和反事实的查询的框架,使任务超出了概率分布本身可以解决的范围。 虽然这些形式主义通常被非正式地描述为捕获因果知识,但缺乏一种正式的理论,表征预测外部干预效果所需的知识类型。 这项工作引入了因果系统的理论框架,以澄清亚里士多德在人工智能中的知识和知识之间的区别。 通过将现有的人工智能技术解释为因果系统,它调查了相应的知识类型。 此外,它认为,预测外部干预的影响是可行的,只有了解原因,提供更精确的理解,必要的知识为此类任务。
Bayesian networks and causal models provide frameworks for handling queries about external interventions and counterfactuals, enabling tasks that go beyond what probability distributions alone can address. While these formalisms are often informally described as capturing causal knowledge, there is a lack of a formal theory characterizing the type of knowledge required to predict the effects of external interventions. This work introduces the theoretical framework of causal systems to clarify Ar...