Machine Learning in Science

We build probabilistic #MachineLearning and #AI Tools for scientific discovery, especially in Neuroscience. Probably not posted by @jakhmack.bsky.social. 📍 @ml4science.bsky.social‬, Tübingen, Germany

Articles & links

New paper: We recast automated scientific model discovery with LLMs as Bayesian inference! LLMs write code and carry domain knowledge, great for proposing models. The key idea: discovery is inference, not just generation. What distribution of models explains the data? 🧵 arxiv.…

A Probabilistic Framework for LLM-Based Model Discovery arxiv.org
AI Weekly's analysis
  • The authors introduce ModelSMC, an algorithm based on Sequential Monte Carlo sampling that treats candidate scientific models as weighted particles.
  • They recast LLM-based model discovery as sampling from an unknown distribution over mechanistic models capable of explaining observational data.
  • Reported experiments on unnamed real-world scientific systems claim interpretable mechanisms and improved posterior predictive checks.
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