Simulation Based Inference
Simulation-based inference (SBI) tackles Bayesian inference problems where the likelihood function is intractable, relying instead on simulations to learn the relationship between model parameters and observed data. Current research emphasizes efficient algorithms and neural network architectures, such as normalizing flows, Bayesian neural networks, and diffusion models, to approximate posterior distributions and accelerate inference, particularly in high-dimensional settings. This approach is proving valuable across diverse scientific fields, enabling robust parameter estimation and uncertainty quantification for complex models in areas ranging from cosmology and climate science to neuroscience and power systems optimization. The development of methods to address model misspecification and improve the scalability and reliability of SBI remains a key focus.
Papers
SimBIG: Field-level Simulation-Based Inference of Galaxy Clustering
Pablo Lemos, Liam Parker, ChangHoon Hahn, Shirley Ho, Michael Eickenberg, Jiamin Hou, Elena Massara, Chirag Modi, Azadeh Moradinezhad Dizgah, Bruno Regaldo-Saint Blancard, David Spergel
Field-level simulation-based inference with galaxy catalogs: the impact of systematic effects
Natalí S. M. de Santi, Francisco Villaescusa-Navarro, L. Raul Abramo, Helen Shao, Lucia A. Perez, Tiago Castro, Yueying Ni, Christopher C. Lovell, Elena Hernandez-Martinez, Federico Marinacci, David N. Spergel, Klaus Dolag, Lars Hernquist, Mark Vogelsberger