Epidemiologist interested in causal inference, infectious disease, trial design
https://christopherbboyer.com/about.html
#causalsky #statssky #episky
One of things I did was have it summarize one of my own papers, since people say "it's so good at it"
arxiv.org/abs/2503.02789
One of things I did was have it summarize one of my own papers, since people say "it's so good at it"
arxiv.org/abs/2503.02789
✅ Theoretical results: identifiability conditions and efficiency.
✅ Simulation & applied examples showing where naïve models fail.
✅ Theoretical results: identifiability conditions and efficiency.
✅ Simulation & applied examples showing where naïve models fail.
✅ Formal definition of “counterfactual prediction estimands.”
✅ Derive estimators combining causal inference (IP weighting, standardization) with predictive modeling that allow for separation between covariates for confounding control and covariates for prediction.
✅ Formal definition of “counterfactual prediction estimands.”
✅ Derive estimators combining causal inference (IP weighting, standardization) with predictive modeling that allow for separation between covariates for confounding control and covariates for prediction.
- Differences in post-baseline treatment policies between training and target population.
- Clinical decision support tools that are meant to inform treatment adoption.
- Removal of undesirable events or features in training data that are unreflective of the target population.
- Differences in post-baseline treatment policies between training and target population.
- Clinical decision support tools that are meant to inform treatment adoption.
- Removal of undesirable events or features in training data that are unreflective of the target population.
Many common tasks in clinical prediction modeling target outcomes or performance statistics under hypothetical interventions (either explicitly or implicitly).
Many common tasks in clinical prediction modeling target outcomes or performance statistics under hypothetical interventions (either explicitly or implicitly).
- Differences in post-baseline treatment policies between training and target population.
- Clinical decision support tools that are meant to inform treatment adoption.
- Removal of undesirable events or features in training data that are unreflective of the target population.
- Differences in post-baseline treatment policies between training and target population.
- Clinical decision support tools that are meant to inform treatment adoption.
- Removal of undesirable events or features in training data that are unreflective of the target population.
Many common tasks in clinical prediction modeling target outcomes or performance statistics under hypothetical interventions (either explicitly or implicitly).
Many common tasks in clinical prediction modeling target outcomes or performance statistics under hypothetical interventions (either explicitly or implicitly).