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Nov, 2016
具有循环和潜变量的结构因果模型基础
Structural Causal Models: Cycles, Marginalizations, Exogenous Reparametrizations and Reductions
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Stephan Bongers, Jonas Peters, Bernhard Schölkopf, Joris M. Mooij
TL;DR
本研究主要在于探究具有潜在共变量和环路的结构因果模型,并证明其遵守特定可解性条件下的便利性质,这一工作将结构因果模型在具有周期的情况下进行了推广,从而提供了一般性的统计因果建模的基础。
Abstract
structural causal models
(SCMs), also known as non-parametric structural equation models (NP-SEMs), are widely used for causal modeling purposes. In this paper, we give a rigorous treatment of
structural causal models
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