Special thanks to my co-authors @davidruegamer.bsky.social and @tnagler.bsky.socialβreally enjoyed this collaboration!
Special thanks to my co-authors @davidruegamer.bsky.social and @tnagler.bsky.socialβreally enjoyed this collaboration!
In this work, we explore how pre-trained neural networks can be leveraged to adjust for confounding in treatment effect estimation involving complex data such as images or textβproviding a principled approach to integrate non-tabular data into causal effect estimation.
Looking forward to presenting our paper "Adjustment for Confounding using Pre-Trained Representations" at #ICML2025 in Vancouver next week! ππ¨π¦
Feel free to check out our paper and reach out if you're attending or would like to discuss!
π Paper: arxiv.org/abs/2506.14329
MCML researchers will be represented at #ICML2025 with more than 20 accepted paper π
Check them out: mcml.ai/news/2025-07...
It has been a great honour to presented our paper "Additive Model Boosting: New Insights and Path(ologie)s" at #AISTATS 2025!π Joint work with @davidruegamer.bsky.social!
Check out the paper and feel free to reach out:
π arxiv.org/abs/2503.05538
It seems that we have 3 accepted papers at ICML 2025 π₯
Congratulations to the #AABI2025 Workshop Track Outstanding Paper Award recipients!
Arriving in Singapore this afternoon π¬ I'll attend #ICLR2025, #AABI2025, and #AISTATS2025 together with many of my students and collaborators to present our 2 orals, 5 posters, and 14 workshop contributions π
Feel free to drop by!
π₯π₯ Two papers accepted at #AISTATS2025 πͺ
- Oral: *Additive Model Boosting: New Insights and Path(ologie)s* by @rickmer.bsky.social
- Poster: *Paths and Ambient Spaces in Neural Loss Landscapes* from Daniel Dold, Julius Kobialka, Nicolai Palm, Emanuel Sommer, Oliver DΓΌrr