Documentdetail
ID kaart

oai:arXiv.org:2411.08957

Onderwerp
Astrophysics - Cosmology and Nonga...
Auteur
Lehman, Kai Krippendorf, Sven Weller, Jochen Dolag, Klaus
Categorie

wetenschappen: astrofysica

Jaar

2024

vermelding datum

20-11-2024

Trefwoorden
existing models simulation
Metriek

Beschrijving

How much cosmological information can we reliably extract from existing and upcoming large-scale structure observations?

Many summary statistics fall short in describing the non-Gaussian nature of the late-time Universe in comparison to existing and upcoming measurements.

In this article we demonstrate that we can identify optimal summary statistics and that we can link them with existing summary statistics.

Using simulation based inference (SBI) with automatic data-compression, we learn summary statistics for galaxy catalogs in the context of cosmological parameter estimation.

By construction these summary statistics do not require the ability to write down an explicit likelihood.

We demonstrate that they can be used for efficient parameter inference.

These summary statistics offer a new avenue for analyzing different simulation models for baryonic physics with respect to their relevance for the resulting cosmological features.

The learned summary statistics are low-dimensional, feature the underlying simulation parameters, and are similar across different network architectures.

To link our models, we identify the relevant scales associated to our summary statistics (e.g. in the range of modes between $k= 5 - 30 h/\mathrm{Mpc}$) and we are able to match the summary statistics to underlying simulation parameters across various simulation models.

;Comment: 44 pages, 14 figures

Lehman, Kai,Krippendorf, Sven,Weller, Jochen,Dolag, Klaus, 2024, Learning Optimal and Interpretable Summary Statistics of Galaxy Catalogs with SBI

Document

Openen

Delen

Bron

Artikelen aanbevolen door ES/IODE AI

Bone metastasis prediction in non-small-cell lung cancer: primary CT-based radiomics signature and clinical feature
non-small-cell lung cancer bone metastasis radiomics risk factor predict cohort model cect cancer prediction 0 metastasis radiomics clinical