Inferring Cosmological Parameters on SDSS via Domain-Generalized Neural Networks and Lightcone Simulations
Jun-Young Lee, Ji-hoon Kim, Minyong Jung, Boon Kiat Oh, Yongseok Jo,, Songyoun Park, Jaehyun Lee, Yuan-Sen Ting, Ho Seong Hwang

TL;DR
This paper demonstrates a novel neural network approach for directly inferring cosmological parameters from galaxy survey data without summary statistics, using domain generalization and lightcone simulations for improved robustness.
Contribution
It introduces a domain-generalized neural network framework that infers cosmological parameters directly from galaxy distributions, avoiding traditional summary statistics and enhancing robustness across different simulation domains.
Findings
Achieved accurate inference of $\
Demonstrated effective domain generalization across simulation datasets.
Improved prediction accuracy over non-generalized models.
Abstract
We present a proof-of-concept simulation-based inference on and from the SDSS BOSS LOWZ NGC catalog using neural networks and domain generalization techniques without the need of summary statistics. Using rapid lightcone simulations, , mock galaxy catalogs are produced that fully incorporate the observational effects. The collection of galaxies is fed as input to a point cloud-based network, . We also add relatively more accurate mocks to obtain robust and generalizable neural networks. By explicitly learning the representations which reduces the discrepancies between the two different datasets via the semantic alignment loss term, we show that the latent space configuration aligns into a single plane in which the two cosmological parameters form clear axes.…
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