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arxiv: 1302.4982 · v1 · pith:FX2VRN6Fnew · submitted 2013-02-20 · 💻 cs.AI

Directed Cyclic Graphical Representations of Feedback Models

classification 💻 cs.AI
keywords conditionalindependencedirectederrorsmodelsvariablescharacterizationcyclic
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The use of directed acyclic graphs (DAGs) to represent conditional independence relations among random variables has proved fruitful in a variety of ways. Recursive structural equation models are one kind of DAG model. However, non-recursive structural equation models of the kinds used to model economic processes are naturally represented by directed cyclic graphs with independent errors, a characterization of conditional independence errors, a characterization of conditional independence constraints is obtained, and it is shown that the result generalizes in a natural way to systems in which the error variables or noises are statistically dependent. For non-linear systems with independent errors a sufficient condition for conditional independence of variables in associated distributions is obtained.

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