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Scientific discovery, causal explanation, and process model induction

机译:科学发现,因果解释和过程模型归纳

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In this paper, I review two related lines of computational research: discovery of scientific knowledge and causal models of scientific phenomena. I also report research on quantitative process models that falls at the intersection of these two themes. This framework represents models as a set of interacting processes, each with associated differential equations that express influences among variables. Simulating such a quantitative process model produces trajectories for variables over time that one can compare to observations. Background knowledge about candidate processes enables search through the space of model structures and associated parameters to find explanations of time-series data. I discuss the representation of such process models, their use for prediction and explanation, and their discovery through heuristic search, along with their interpretation as causal accounts of dynamic behavior.
机译:在本文中,我回顾了计算研究的两个相关方面:科学知识的发现和科学现象的因果模型。我还报告了对这两个主题相交的定量过程模型的研究。该框架将模型表示为一组相互作用的过程,每个过程都有关联的微分方程,这些微分方程表示变量之间的影响。模拟这种定量过程模型会产生随时间变化的变量轨迹,可以与观察结果进行比较。有关候选过程的背景知识可以在模型结构和相关参数的空间中进行搜索,以找到时间序列数据的解释。我将讨论此类过程模型的表示形式,它们在预测和解释中的用途以及通过启发式搜索进行发现的过程,以及它们对动态行为的因果关系的解释。

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