Professor Imbens also had a mentoring session with our PhD students actively working on causality, discussing their ideas and the potential impact of their applications! ๐จโ๐ฌ๐ฉโ๐ฌ
@matyasch.bsky.social @roelhulsman.bsky.social @rmassidda.it @danruxu.bsky.social ๐ฅ
13.12.2024 08:47 โ ๐ 13 ๐ 4 ๐ฌ 1 ๐ 1
Paper: https://arxiv.org/pdf/2403.08335
Poster: https://icml.cc/media/PosterPDFs/ICML%202024/34245.png?t=1718097333.6908739
Code: https://github.com/danrux/sparsity-crl
22.07.2024 12:32 โ ๐ 0 ๐ 0 ๐ฌ 0 ๐ 0
๐๐ฅ Joint work with a group of great researchers @Dingling_Yao @seblachap @PerouzT @JKugelgen @FrancescoLocat8 @saramagliacane
22.07.2024 12:32 โ ๐ 0 ๐ 0 ๐ฌ 0 ๐ 0
3๏ธโฃFinally, we propose two methods that implement these theoretical results and validate their effectiveness with experiments on simulated data and image benchmarks.
22.07.2024 12:31 โ ๐ 0 ๐ 0 ๐ฌ 0 ๐ 0
2๏ธโฃWe introduce two theoretical results for identifying causal variables up to permutation and element-wise transformation under partial observability. Both results leverage a sparsity constraint.
22.07.2024 12:30 โ ๐ 0 ๐ 0 ๐ฌ 0 ๐ 0
1๏ธโฃ We formalize the Unpaired Partial Observations setting for causal representation learning, where each partial observation captures only a subset of causal variables.
22.07.2024 12:30 โ ๐ 0 ๐ 0 ๐ฌ 0 ๐ 0
โ๏ธ ICML2024 โ๏ธ
Tuesday 11:30-13:00 #2201
โDo you want to identify high-level causal variables from perceptual data under partial observable setup?
๐กHere we focus on learning from unpaired observations from a dataset with an instance-dependent partial observability pattern.
22.07.2024 12:29 โ ๐ 1 ๐ 0 ๐ฌ 1 ๐ 0
Actionable #causalinference with real-world impact.
We use health data to help decision makers make better decisions.
We train investigators at Harvard T.H. Chan School of Public Health.
Connect with CAUSALab: https://linktr.ee/causalab
Assistant Professor of Machine Learning
Generative AI, Uncertainty Quantification, AI4Science
Amsterdam Machine Learning Lab, University of Amsterdam
https://naesseth.github.io
PhD Candidate Causal Machine Learning @AMLab @Adyen
International Conference on Learning Representations https://iclr.cc/
Associate professor of social computing at UW CSE, leading @socialfutureslab.bsky.social
social.cs.washington.edu
Associate Professor of Machine Learning, University of Oxford;
OATML Group Leader;
Director of Research at the UK government's AI Safety Institute (formerly UK Taskforce on Frontier AI)
Research scientist at FAIR NY โค๏ธ LLMs + Information Theory. Previously, PhD at UoAmsterdam, intern at DeepMind + MSRC.
Associate Professor (UHD) at the University of Amsterdam. Probabilistic methods, deep learning, and their applications in science in engineering.
Professor at BIFOLD & TU Berlin, research on data engineering for ML. Previously at UvA, NYU, Amazon, Twitter. Opinions are my own.
https://deem.berlin
Faculty at CWI & ELLIS Amsterdam https://trl-lab.github.io. Research on AI and tabular data to democratize insights from structured data. Prev at UC Berkeley and the University of Amsterdam.
https://www.madelonhulsebos.com
Fostering a dialogue between industry and academia on causal data science.
Causal Data Science Meeting 2025: causalscience.org
Machine Learner by day, ๐ฆฎ Statistician at โค๏ธ
In search of statistical intuition for modern ML & simple explanations for complex things๐
Interested in the mysteries of modern ML, causality & all of stats. Opinions my own.
https://aliciacurth.github.io
Assistant Prof of Statistics at Rutgers
Previously: postdoc in the Blei Lab at Columbia. PhD in Statistics from University of Pennsylvania.
https://www.gemma-moran.com
Aussie ๐ฆ| NYC-based ๐ฝ
Prof. of #Statistics, #machinelearning / ethics for #datascience @LSE. Unschooled to community college to PhD @Stanford
Technology, institutions, and ideas should serve people, but much of humanity is stuck with this upside-down.
AI professor at Caltech. General Chair ICLR 2025.
http://www.yisongyue.com
Professor of Technology and Economic Policy | Co-founder of causalscience.org | Associate Editor at Journal of Causal Inference | Executive Team at Academy of Management TIM Division