Conditional Diffusion-Flow models for generating 3D cosmic density fields: applications to f(R) cosmologies
Abstract
Next-generation galaxy surveys promise unprecedented precision in testing gravity at cosmological scales. However, realising this potential requires accurately modelling the non-linear cosmic web. We address this challenge by exploring conditional generative modelling to create 3D dark matter density fields via score-based (diffusion) and flow-based methods. Our results demonstrate the power of diffusion models to accurately reproduce the matter power spectra and bispectra, even for unseen configurations. They also offer a significant speed-up with slightly reduced accuracy, when flow-based reconstructing the probability distribution function, but they struggle with higher-order statistics. To improve conditional generation, we introduce a novel multi-output model to develop feature representations of the cosmological parameters. Our findings offer a powerful tool for exploring deviations from standard gravity, combining high precision with reduced computational cost, thus paving the way for more comprehensive and efficient cosmological analyses
Cite
@article{arxiv.2502.17087,
title = {Conditional Diffusion-Flow models for generating 3D cosmic density fields: applications to f(R) cosmologies},
author = {Julieth Katherine Riveros and Paola Saavedra and Hector J. Hortua and Jorge Enrique Garcia-Farieta and Ivan Olier},
journal= {arXiv preprint arXiv:2502.17087},
year = {2025}
}
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