On Differentiable Bayesian Causal Structure Learning
Abstract
This extended abstract reviews differentiable Bayesian causal structure learning (CSL) and discusses why recent works on Bayesian causal discovery published in top-tier conference do not yet meet important desiderata. In particular, we advocate against the current trend of global regularization via prior terms
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- Rittel, Simon
- Tschiatschek, Sebastian
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Shortfacts
Category |
Paper in Conference Proceedings or in Workshop Proceedings (Poster) |
Event Title |
40th Conference on Uncertainty in Artifical Intelligence |
Divisions |
Data Mining and Machine Learning |
Event Location |
Barcelona, Spain |
Event Type |
Workshop |
Event Dates |
15.-19.07.2024 |
Date |
15 July 2024 |
Export |
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