AI RESEARCH

Towards a holistic understanding of Selection Bias for Causal Effect Identification

arXiv CS.AI

ArXi:2605.13430v1 Announce Type: cross Selection bias is pervasive in observational studies. For example, large scale biobanks data can exhibit ``healthy volunteer bias'' when respondents are healthier and of higher socio-economic status than the population they are meant to represent. Recovering causal effects from such sub-population is an important problem in causal inference, as estimating average treatment effects (ATE) from selected populations can result in a severely biased estimate of the ATE from the whole population.