We conjecture that the worst case number of experiments necessary and sufficient to discover a causal graph uniquely given its observational Markov equivalence class can be specified as a function of the largest clique in the Markov equivalence class. We provide an algorithm that computes intervention sets that we believe are optimal for the above task. The algorithm builds on insights gained from the worst case analysis in Eberhardt et al. (2005) for sequences of experiments when all possible directed acyclic graphs over N variables are considered. A simulation suggests that our conjecture is correct. We also show that a generalization of our conjecture to other classes of possible graph hypotheses cannot be given easily, and in what sense...
Causal discovery from observational and interventional data is challenging due to limited data and n...
We study the problem of inferring causal graphs from observational data. We are particularly interes...
© 2018 Curran Associates Inc.All rights reserved. We consider testing and learning problems on causa...
We conjecture that the worst case number of experiments necessary and sufficient to discover a causa...
The causal discovery from data is important for various scientific investigations. Because we cannot...
The focus of the dissertation is on learning causal diagrams beyond Markov equivalence. The baseline...
We show that if any number of variables are allowed to be simultaneously and independently randomize...
Directed Acyclic Graphs (DAGs) are a powerful tool to model the network of dependencies among variab...
We consider the problem of reducing the false discovery rate in multiple high-dimensional interventi...
The causal relationships among a set of random variables are commonly represented by a Directed Acyc...
Because causal learning from observational data cannot avoid the inherent indistinguishability for c...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
A common theme in causal inference is learning causal relationships between observed variables, also...
Randomized controlled experiments are often described as the most reliable tool available to scienti...
We consider testing and learning problems on causal Bayesian networks as defined by Pearl Pea09]. Gi...
Causal discovery from observational and interventional data is challenging due to limited data and n...
We study the problem of inferring causal graphs from observational data. We are particularly interes...
© 2018 Curran Associates Inc.All rights reserved. We consider testing and learning problems on causa...
We conjecture that the worst case number of experiments necessary and sufficient to discover a causa...
The causal discovery from data is important for various scientific investigations. Because we cannot...
The focus of the dissertation is on learning causal diagrams beyond Markov equivalence. The baseline...
We show that if any number of variables are allowed to be simultaneously and independently randomize...
Directed Acyclic Graphs (DAGs) are a powerful tool to model the network of dependencies among variab...
We consider the problem of reducing the false discovery rate in multiple high-dimensional interventi...
The causal relationships among a set of random variables are commonly represented by a Directed Acyc...
Because causal learning from observational data cannot avoid the inherent indistinguishability for c...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
A common theme in causal inference is learning causal relationships between observed variables, also...
Randomized controlled experiments are often described as the most reliable tool available to scienti...
We consider testing and learning problems on causal Bayesian networks as defined by Pearl Pea09]. Gi...
Causal discovery from observational and interventional data is challenging due to limited data and n...
We study the problem of inferring causal graphs from observational data. We are particularly interes...
© 2018 Curran Associates Inc.All rights reserved. We consider testing and learning problems on causa...