Projects per year
Abstract
Causal discovery in the presence of missing data introduces a chicken-and-egg dilemma. While the goal is to recover the true causal structure, robust imputation requires considering the dependencies or, preferably, causal relations among variables. Merely filling in missing values with existing imputation methods and subsequently applying structure learning on the complete data is empirically shown to be sub-optimal. To address this problem, we propose a score-based algorithm for learning causal structures from missing data based on optimal transport. This optimal transport viewpoint diverges from existing score-based approaches that are dominantly based on expectation maximization. We formulate structure learning as a density fitting problem, where the goal is to find the causal model that induces a distribution of minimum Wasserstein distance with the observed data distribution. Our framework is shown to recover the true causal graphs more effectively than competing methods in most simulations and real-data settings. Empirical evidence also shows the superior scalability of our approach, along with the flexibility to incorporate any off-the-shelf causal discovery methods for complete data.
Original language | English |
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Title of host publication | International Conference on Machine Learning, 21-27 July 2024, Vienna, Austria |
Editors | Ruslan Salakhutdinov, Zico Kolter, Katherine Heller, Adrian Weller, Nuria Oliver, Jonathan Scarlett, Felix Berkenkamp |
Place of Publication | London UK |
Publisher | Proceedings of Machine Learning Research (PMLR) |
Pages | 49605-49626 |
Number of pages | 22 |
Volume | 235 |
Publication status | Published - 2024 |
Event | International Conference on Machine Learning 2024 - Vienna, Austria Duration: 21 Jul 2024 → 27 Jul 2024 Conference number: 41st https://proceedings.mlr.press/v235/ (Proceedings) https://www.itsoc.org/event/icml-2024 (Website) |
Conference
Conference | International Conference on Machine Learning 2024 |
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Abbreviated title | ICML 2024 |
Country/Territory | Austria |
City | Vienna |
Period | 21/07/24 → 27/07/24 |
Internet address |
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Projects
- 1 Active
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Exploiting Geometries of Learning for Fast, Adaptive and Robust AI
Phung, D. (Primary Chief Investigator (PCI)), Tafazzoli Harandi, M. (Chief Investigator (CI)), Hartley, R. I. (Chief Investigator (CI)), Le, T. (Chief Investigator (CI)) & Koniusz, P. (Partner Investigator (PI))
ARC - Australian Research Council
8/05/23 → 7/05/26
Project: Research