Rui Chen, Sanjeeb Dash, et al.
ICML 2021
Data competitions proved to be highly beneficial to the field of machine learning, and thus expected to provide similar advantages in the field of causal inference. As participants in the 2016 and 2017 Atlantic Causal Inference Conference (ACIC) data competitions and co-organizers of the 2018 competition, we discuss the strengths of simulation-based competitions and suggest potential extensions to address their limitations. These suggested augmentations aim at making the data generating processes more realistic and gradually increase in complexity, allowing thorough investigations of al- gorithms’ performance. We further outline a community-wide competition framework to evaluate an end-to-end causal inference pipeline, beginning with a causal question and a database, and ending with causal estimates.
Rui Chen, Sanjeeb Dash, et al.
ICML 2021
Abhin Shah, Kartik Ahuja, et al.
ICASSP 2021
Yoav Kan-Tor, Michael Morris Danziger, et al.
ISMB 2025
Vesna Resende Barros, Itay Manes, et al.
PLoS ONE