16–20 Jun 2025
THotel, Cagliari, Sardinia, Italy
Europe/Rome timezone

Sequential simulation-based inference for cosmological initial conditions

Not scheduled
20m
THotel, Cagliari, Sardinia, Italy

THotel, Cagliari, Sardinia, Italy

Via dei Giudicati, 66, 09131 Cagliari (CA), Italy
Parallel talk Simulations & Generative Models

Speaker

O Savchenko

Description

Knowledge of the primordial matter density field from which the present non-linear observations formed is of fundamental importance for cosmology, as it contains an immense wealth of information about the physics, evolution, and initial conditions of the universe. Reconstructing this density field from galaxy survey data is a notoriously difficult task, requiring sophisticated statistical methods, advanced cosmological simulators, and exploration of a multi-million-dimensional parameter space. In this talk, I will discuss how sequential simulation-based inference allows us to tackle this problem and simultaneously obtain data-constrained realisations of the primordial dark matter density field together with constraints on the cosmological parameters in a simulation-efficient way for general non-differentiable simulators. In addition, I will describe our novel adaptive learning training strategy and how our results compare to those obtained with classical likelihood-based methods such as Hamiltonian Monte Carlo.

AI keywords simulation-based inference, adaptive learning, uncertainty quantification, field-level inference

Primary authors

O Savchenko Guillermo Franco Abellán (GRAPPA Institute, University of Amsterdam) Christoph Weniger (GRAPPA, University of Amsterdam) Noemi Anau Montel (Max Planck Institute for Astrophysics) Florian List (University of Vienna)

Presentation materials

There are no materials yet.