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arxiv: 1207.1365 · v1 · pith:DZGTRMDJnew · submitted 2012-07-04 · 📊 stat.ME · cs.AI

Towards Characterizing Markov Equivalence Classes for Directed Acyclic Graphs with Latent Variables

classification 📊 stat.ME cs.AI
keywords classequivalencegraphsvariableslatentancestralcausalcommon
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It is well known that there may be many causal explanations that are consistent with a given set of data. Recent work has been done to represent the common aspects of these explanations into one representation. In this paper, we address what is less well known: how do the relationships common to every causal explanation among the observed variables of some DAG process change in the presence of latent variables? Ancestral graphs provide a class of graphs that can encode conditional independence relations that arise in DAG models with latent and selection variables. In this paper we present a set of orientation rules that construct the Markov equivalence class representative for ancestral graphs, given a member of the equivalence class. These rules are sound and complete. We also show that when the equivalence class includes a DAG, the equivalence class representative is the essential graph for the said DAG

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