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首页> 外文期刊>Signal and Information Processing over Networks, IEEE Transactions on >Measuring Causal Relationships in Dynamical Systems through Recovery of Functional Dependencies
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Measuring Causal Relationships in Dynamical Systems through Recovery of Functional Dependencies

机译:通过恢复功能依赖关系来测量动态系统中的因果关系

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摘要

We introduce a measure of causality that captures the functional dependencies in dynamical systems and subsequently, define anew type of graphical model, functional dependency graph, to encode such dependencies. We study the relationship between this type of graphical model and other graphical models such as directed information graphs and linear dynamical graphs that have been proposed to capture causal influences in dynamical systems. We show that functional dependency graphs are a generalization of these previously introduced graphical models and learn the functional dependencies in a larger class of models. We also establish sufficient conditions under which the functional dependency graph defined through our measure is equivalent to the directed information graphs. Some simulation results on linear and nonlinear dynamics are provided.
机译:我们引入因果关系的量度,以捕获动态系统中的功能依存关系,然后定义一种新的图形模型类型,即功能依存关系图,以对此类依存关系进行编码。我们研究了这种类型的图形模型与其他图形模型之间的关系,这些图形模型例如有向信息图和线性动态图已被提出来捕获动态系统中的因果影响。我们展示了功能依赖图是这些先前介绍的图形模型的概括,并在更大的模型类中学习了功能依赖。我们还建立了充分的条件,在这种条件下,通过我们的方法定义的功能依赖图等同于有向信息图。提供了一些关于线性和非线性动力学的仿真结果。

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