Causal discovery algorithms estimate causal graphs from observational data. This can provide a valuable complement to analyses focusing on the causal relation between individual treatment-outcome pairs. Constraint-based causal discovery algorithms rely on conditional independence testing when building the graph. Until recently, these algorithms have been unable to handle missing values. In this article, we investigate two alternative solutions: test-wise deletion and multiple imputation. We establish necessary and sufficient conditions for the recoverability of causal structures under test-wise deletion, and argue that multiple imputation is more challenging in the context of causal discovery than for estimation. We conduct an extensive com...
International audienceTo test for association between a disease and a set of linked markers, or to e...
With incomplete data, the "missing at random" (MAR) assumption is widely understood to enable unbias...
Causal inference for testing clinical hypotheses from observational data presents many difficulties ...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Causal interpretation of relationships is complicated by the ‘fundamental problem of causal inferenc...
Background: The fundamental problem of causal inference is one of missing data, and specifically of ...
Background: The fundamental problem of causal inference is one of missing data, and specifically of ...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
One common drawback in algorithms for learning Linear Causal Models is that they can not deal with i...
In health and medical sciences, multiple imputation (MI) is now becoming popular to obtain valid inf...
In health and medical sciences, multiple imputation (MI) is now becoming popular to obtain valid inf...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Multiple imputation is particularly well suited to deal with missing data in large epidemiologic stu...
Missing data are ubiquitous in many domains such as healthcare. When these data entries are not miss...
State-of-the-art causal discovery methods usually assume that the observational data is complete. Ho...
International audienceTo test for association between a disease and a set of linked markers, or to e...
With incomplete data, the "missing at random" (MAR) assumption is widely understood to enable unbias...
Causal inference for testing clinical hypotheses from observational data presents many difficulties ...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Causal interpretation of relationships is complicated by the ‘fundamental problem of causal inferenc...
Background: The fundamental problem of causal inference is one of missing data, and specifically of ...
Background: The fundamental problem of causal inference is one of missing data, and specifically of ...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
One common drawback in algorithms for learning Linear Causal Models is that they can not deal with i...
In health and medical sciences, multiple imputation (MI) is now becoming popular to obtain valid inf...
In health and medical sciences, multiple imputation (MI) is now becoming popular to obtain valid inf...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Multiple imputation is particularly well suited to deal with missing data in large epidemiologic stu...
Missing data are ubiquitous in many domains such as healthcare. When these data entries are not miss...
State-of-the-art causal discovery methods usually assume that the observational data is complete. Ho...
International audienceTo test for association between a disease and a set of linked markers, or to e...
With incomplete data, the "missing at random" (MAR) assumption is widely understood to enable unbias...
Causal inference for testing clinical hypotheses from observational data presents many difficulties ...