Modern causal analysis involves two major tasks, discovery and identification. The first aims to learn a causal structure compatible with the available data, the second leverages that structure to estimate causal effects. Rather than performing the two tasks in tandem, as is usually done in the literature, we propose a symbiotic approach in which the two are performed simultaneously for mutual benefit; information gained through identification helps causal discovery and vice versa. This approach enables the usage of Verma constraints, which remain dormant in constraint-based methods of discovery, and permit us to learn more complete structures, hence identify a larger set of causal effects than previously achievable with standard methods
The paper looks at the conditional independence search approach to causal discovery, proposed by Spi...
Causal inference methods based on conditional independence construct Markov equivalent graphs and ca...
Methods to identify cause-effect relationships currently mostly assume the variables to be scalar ra...
We present a novel approach to constraint-based causal discovery, that takes the form of straightfor...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
This thesis made outstanding contribution in automating the discovery of linear causal models. It in...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
Contains fulltext : 83472.pdf (preprint version ) (Open Access
A number of approaches to causal discovery assume that there are no hidden confounders and are desig...
Much of our experiments are designed to uncover the cause(s) and effect(s) behind a data generating ...
Automatic causal discovery is a challenge research with extraordinary significance in sceintific res...
The drive to understand the laws that govern the universe and ourselves in order to expand our view ...
This paper concerns the assessment of direct causal effects from a combination of: (i) non-experimen...
This paper concerns the assessment of direct causal effects from a combination of: (i) non-experimen...
The discovery of causal relationships between a set of observed variables is a fundamental problem i...
The paper looks at the conditional independence search approach to causal discovery, proposed by Spi...
Causal inference methods based on conditional independence construct Markov equivalent graphs and ca...
Methods to identify cause-effect relationships currently mostly assume the variables to be scalar ra...
We present a novel approach to constraint-based causal discovery, that takes the form of straightfor...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
This thesis made outstanding contribution in automating the discovery of linear causal models. It in...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
Contains fulltext : 83472.pdf (preprint version ) (Open Access
A number of approaches to causal discovery assume that there are no hidden confounders and are desig...
Much of our experiments are designed to uncover the cause(s) and effect(s) behind a data generating ...
Automatic causal discovery is a challenge research with extraordinary significance in sceintific res...
The drive to understand the laws that govern the universe and ourselves in order to expand our view ...
This paper concerns the assessment of direct causal effects from a combination of: (i) non-experimen...
This paper concerns the assessment of direct causal effects from a combination of: (i) non-experimen...
The discovery of causal relationships between a set of observed variables is a fundamental problem i...
The paper looks at the conditional independence search approach to causal discovery, proposed by Spi...
Causal inference methods based on conditional independence construct Markov equivalent graphs and ca...
Methods to identify cause-effect relationships currently mostly assume the variables to be scalar ra...