Causal Inference
The Average Treatment Effect (ATE) is a key concept in causal inference that quantifies the difference in outcomes between units that receive a treatment and those that do not, averaged over the entire population. It provides a single summary measure of the treatment effect, making it crucial for understanding the overall impact of interventions. By assessing how an average individual responds to a treatment, ATE helps in making informed decisions based on data from randomized experiments, inverse probability weighting, and conditional average treatment effects.
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