Recent work on neural algorithmic reasoning has investigated the reasoni...
High model performance, on average, can hide that models may systematica...
Consider the problem of improving the estimation of conditional average
...
Leveraging labelled data from multiple domains to enable prediction in
a...
Estimating personalized effects of treatments is a complex, yet pervasiv...
Despite recent progress made by self-supervised methods in representatio...
Choosing the best treatment-plan for each individual patient requires
ac...
Understanding decision-making in clinical environments is of paramount
i...
Medical time-series datasets have unique characteristics that make predi...
Selecting causal inference models for estimating individualized treatmen...
Organ transplantation is often the last resort for treating end-stage
il...
Consider learning a policy purely on the basis of demonstrated
behavior—...
While much attention has been given to the problem of estimating the eff...
Identifying when to give treatments to patients and how to select among
...
The estimation of treatment effects is a pervasive problem in medicine.
...