© 2018 Curran Associates Inc.All rights reserved. We consider testing and learning problems on causal Bayesian networks as defined by Pearl [Pea09]. Given a causal Bayesian network M on a graph with n discrete variables and bounded in-degree and bounded “confounded components”, we show that O(log n) interventions on an unknown causal Bayesian network X on the same graph, and O(n/2) samples per intervention, suffice to efficiently distinguish whether X = M or whether there exists some intervention under which X and M are farther than in total variation distance. We also obtain sample/time/intervention efficient algorithms for: (i) testing the identity of two unknown causal Bayesian networks on the same graph; and (ii) learning a causal Bayes...
Bayesian networks are powerful models for probabilistic inference that compactly encode in their str...
Directed Acyclic Graphs (DAGs) provide an effective framework for learning causal relationships amon...
We conjecture that the worst case number of experiments necessary and sufficient to discover a causa...
We consider testing and learning problems on causal Bayesian networks as defined by Pearl Pea09]. Gi...
Abstract—Bayesian Networks are probabilistic models of data that are useful to answer probabilistic ...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
We propose a penalized log-likelihood method for estimating causal Bayesian networks using a mix of ...
In this paper, we propose a causal analog to the purely observational dynamic Bayesian networks, whi...
Causal structure learning algorithms construct Bayesian networks from observational data. Using non-...
We consider the problem of reducing the false discovery rate in multiple high-dimensional interventi...
From conventional observation data , it is rarely possible to determine a fully causal Bayesian netw...
Causal Bayesian networks are graphically represented by directed acyclic graphs (DAGs). Learning cau...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
Causal directed acyclic graphs (DAGs) are naturally tailored to represent biological signalling path...
Recent work has shown promising results in causal discovery by leveraging interventional data with g...
Bayesian networks are powerful models for probabilistic inference that compactly encode in their str...
Directed Acyclic Graphs (DAGs) provide an effective framework for learning causal relationships amon...
We conjecture that the worst case number of experiments necessary and sufficient to discover a causa...
We consider testing and learning problems on causal Bayesian networks as defined by Pearl Pea09]. Gi...
Abstract—Bayesian Networks are probabilistic models of data that are useful to answer probabilistic ...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
We propose a penalized log-likelihood method for estimating causal Bayesian networks using a mix of ...
In this paper, we propose a causal analog to the purely observational dynamic Bayesian networks, whi...
Causal structure learning algorithms construct Bayesian networks from observational data. Using non-...
We consider the problem of reducing the false discovery rate in multiple high-dimensional interventi...
From conventional observation data , it is rarely possible to determine a fully causal Bayesian netw...
Causal Bayesian networks are graphically represented by directed acyclic graphs (DAGs). Learning cau...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
Causal directed acyclic graphs (DAGs) are naturally tailored to represent biological signalling path...
Recent work has shown promising results in causal discovery by leveraging interventional data with g...
Bayesian networks are powerful models for probabilistic inference that compactly encode in their str...
Directed Acyclic Graphs (DAGs) provide an effective framework for learning causal relationships amon...
We conjecture that the worst case number of experiments necessary and sufficient to discover a causa...