Martin Huber
@causalhuber
Professor of Applied Econometrics and Policy Evaluation at @ses_unifr @unifr - causal analysis, statistics, econometrics, machine learning...and telemarking
ID: 1176867972163559424
https://www3.unifr.ch/appecon/en/chair/team/prof/ 25-09-2019 14:36:27
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Struggling with confounding in causal analysis? Learn how instrumental variables can help! Join Martin Huber's workshop to master IV methods in R, from LATE identification to machine learning. Suitable for both IV newcomers and experts alike! ➡️bit.ly/instrumental-v…
Attending the Swiss Public Health Conference at my home institution SES UNIFR Uni Fribourg in #Fribourg! 🎉 Proud that my Ph.D. student Andreas Stoller is a winner of the conference’s ‘Best Ph.D. Abstract’ award for our impact evaluation of tobacco advertising bans. Public Health Schweiz
Had the pleasure of giving a workshop on causal mediation analysis (exploring causal mechanisms of treatment variables) at MCC Berlin in #Berlin. A huge thank you to Patrick Klösel (@patrickkloesel.bsky.social) from Potsdam Institute for Climate Impact Research PIK and colleagues for hosting me and for the engaging, insightful discussions!
Hey folks! We'll have a special live #CausalBanditsPodcast episode at this year's #CDSM with Ciarán Gilligan-Lee Ciarán is the Head of the Advanced Causal Inference Research Lab at Spotify and Honorary Associate Professor at UCL #CausalInference #causaltwitter #DataScience
🚀 Say hello to the #KOMEX2025 faculty! 🎓 These professors bring cutting-edge knowledge in methods training to help you elevate your research. Join us for an inspiring learning journey! The registration is open: afww.uni-konstanz.de/en/view/komex/… MethodsNET Universität Konstanz Uni Konstanz Department of Politics & Public Admіn
Delighted to attend the Causal Inference 2024 workshop at TU München and present our paper (joint with Nicolas Apfel-Totaro, Julia Hatamyar, Jannis Kueck) on learning control variables and instruments for causal analysis in observational data using #MachineLearning: arxiv.org/abs/2407.04448