Transfer learning for multifidelity simulation-based inference in cosmology
Saoulis, Alex A., Piras, Davide, Jeffrey, Niall, Mancini, Alessio Spurio, Ferreira, Ana M. G., Joachimi, Benjamin
–arXiv.org Artificial Intelligence
Simulation-based inference (SBI) enables cosmological parameter estimation when closed-form likelihoods or models are unavailable. However, SBI relies on machine learning for neural compression and density estimation. This requires large training datasets which are prohibitively expensive for high-quality simulations. We overcome this limitation with multifidelity transfer learning, combining less expensive, lower-fidelity simulations with a limited number of high-fidelity simulations. We demonstrate our methodology on dark matter density maps from two separate simulation suites in the hydrodynamical CAMELS Multifield Dataset. Pre-training on dark-matter-only $N$-body simulations reduces the required number of high-fidelity hydrodynamical simulations by a factor between $8$ and $15$, depending on the model complexity, posterior dimensionality, and performance metrics used. By leveraging cheaper simulations, our approach enables performant and accurate inference on high-fidelity models while substantially reducing computational costs.
arXiv.org Artificial Intelligence
Sep-29-2025
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- France > Hauts-de-France
- Switzerland > Geneva
- Geneva (0.14)
- United Kingdom (0.14)
- North America > United States
- California
- San Mateo County > Menlo Park (0.04)
- Santa Clara County > Palo Alto (0.04)
- California
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- Genre:
- Research Report > New Finding (0.93)
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