Challenges in Statistics: A Dozen Challenges in Causality and Causal Inference
Challenges in Statistics: A Dozen Challenges in Causality and Causal Inference
Causality and causal inference have emerged as core research areas at the interface of modern statistics and domains including biomedical sciences, social sciences, computer science, and beyond. The field's inherently interdisciplinary nature -- particularly the central role of incorporating domain knowledge -- creates a rich and varied set of statistical challenges. Much progress has been made, especially in the last three decades, but there remain many open questions. Our goal in this discussion is to outline research directions and open problems we view as particularly promising for future work. Throughout we emphasize that advancing causal research requires a wide range of contributions, from novel theory and methodological innovations to improved software tools and closer engagement with domain scientists and practitioners.
Carlos Cinelli、Avi Feller、Guido Imbens、Edward Kennedy、Sara Magliacane、Jose Zubizarreta
计算技术、计算机技术自动化基础理论
Carlos Cinelli,Avi Feller,Guido Imbens,Edward Kennedy,Sara Magliacane,Jose Zubizarreta.Challenges in Statistics: A Dozen Challenges in Causality and Causal Inference[EB/OL].(2025-08-23)[2025-09-06].https://arxiv.org/abs/2508.17099.点此复制
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