Joao Lucas de Sousa Almeida, Arthur Cancelieri Pires, et al.
IEEE Transactions on Artificial Intelligence
Imagine the newest medical prediction algorithm is claiming you have high-risk for some health condition. I bet the first thing going through your mind is "well, what can I do to reduce it". Regular prediction is not always enough, we often care about predicting the consequences of several paths of action we can take - the causal effect of these actions. In this talk I will briefly present causal inference - the science of estimating causal effect of actions using observational data and how it differs from regular prediction. I will overview models for estimating causal effect and how to apply them with causallib - a one-stop-shop open-source Python package for flexible causal inference modeling.
Joao Lucas de Sousa Almeida, Arthur Cancelieri Pires, et al.
IEEE Transactions on Artificial Intelligence
Simone Magnani, Stefano Braghin, et al.
Big Data 2023
Amol Thakkar, Andrea Antonia Byekwaso, et al.
ACS Fall 2022
Dimitrios Christofidellis, Giorgio Giannone, et al.
MRS Spring Meeting 2023