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arxiv: 1905.09515 · v1 · pith:KN7G2ERJnew · submitted 2019-05-23 · 📊 stat.ME · stat.OT

Atlantic Causal Inference Conference (ACIC) Data Analysis Challenge 2017

classification 📊 stat.ME stat.OT
keywords datachallengeinferenceacicanalysisassociatedatlanticcausal
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This brief note documents the data generating processes used in the 2017 Data Analysis Challenge associated with the Atlantic Causal Inference Conference (ACIC). The focus of the challenge was estimation and inference for conditional average treatment effects (CATEs) in the presence of targeted selection, which leads to strong confounding. The associated data files and further plots can be found on the first author's web page.

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