none3siThe abundance of data produced daily from large variety of sources has boosted the need of novel approaches on causal inference analysis from observational data. Observational data often contain noisy or missing entries. Moreover, causal inference studies may require unobserved high-level information which needs to be inferred from other observed attributes. In such cases, inaccuracies of the applied inference methods will result in noisy outputs. In this study, we propose a novel approach for causal inference when one or more key variables are noisy. Our method utilizes the knowledge about the uncertainty of the real values of key variables in order to reduce the bias induced by noisy measurements. We evaluate our approach in compar...
Problems with inferring causal relationships from nonexperimental data are briefly reviewed, and fou...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
The abundance of data produced daily from large variety of sources has boosted the need of novel app...
The abundance of data produced daily from large variety of sources has boosted the need of novel app...
Measurement errors cause problems in causal inference. However, except for canonical cases, research...
Although published works rarely include causal estimates from more than a few model specifications, ...
Instrumental variable methods provide useful tools for inferring causal effects in the presence of u...
Although published works rarely include causal estimates from more than a few model specifications, ...
Methods based on propensity score (PS) have become increasingly popular as a tool for causal inferen...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
We analyze a family of methods for statisti-cal causal inference from sample under the so-called Add...
A main message from the causal modelling literature in the last several decades is that under some p...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
Problems with inferring causal relationships from nonexperimental data are briefly reviewed, and fou...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
The abundance of data produced daily from large variety of sources has boosted the need of novel app...
The abundance of data produced daily from large variety of sources has boosted the need of novel app...
Measurement errors cause problems in causal inference. However, except for canonical cases, research...
Although published works rarely include causal estimates from more than a few model specifications, ...
Instrumental variable methods provide useful tools for inferring causal effects in the presence of u...
Although published works rarely include causal estimates from more than a few model specifications, ...
Methods based on propensity score (PS) have become increasingly popular as a tool for causal inferen...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
We analyze a family of methods for statisti-cal causal inference from sample under the so-called Add...
A main message from the causal modelling literature in the last several decades is that under some p...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
Problems with inferring causal relationships from nonexperimental data are briefly reviewed, and fou...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...