Probabilistic Galaxy Field Generation with Diffusion Models
Tanner Sether, Elena Giusarma, Mauricio Reyes-Hurtado

TL;DR
This paper presents a new machine learning method using CNNs and diffusion models trained on CAMELS data to generate accurate, scalable galaxy catalogs, outperforming traditional methods and enabling better cosmological analyses.
Contribution
Introduces a novel diffusion model-based approach for galaxy catalog generation that improves accuracy and efficiency over traditional methods like HOD.
Findings
Outperforms traditional HOD in accuracy
Significantly faster than hydrodynamic simulations
Enables scalable galaxy catalog generation
Abstract
In the era of precision cosmology, the ability to generate accurate and large-scale galaxy catalogs is crucial for advancing our understanding of the universe. With the flood of cosmological data from current and upcoming missions, generating theoretical predictions to compare with these observations is essential for constraining key cosmological parameters. While traditional methods, such as the Halo-Occupation Distribution (HOD), have provided foundational insights, they struggle to balance the need for both accuracy and computational efficiency. High-fidelity hydrodynamic simulations offer improved precision but are computationally expensive and resource-intensive. In this work, we introduce a novel machine learning approach that harnesses Convolutional Neural Networks (CNNs) and Diffusion Models, trained on the CAMELS simulation suite, to bridge the gap between computationally…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Adaptive optics and wavefront sensing · Stellar, planetary, and galactic studies
