4–5 mai 2026
IAP
Fuseau horaire Europe/Paris

Machine Learning for Global Fit

5 mai 2026, 10:40
20m
Amphithéatre Henri Mineur (IAP)

Amphithéatre Henri Mineur

IAP

98 bis boulevard Arago , 75014 Paris

Orateur

Antsa Rasamoela (L2I Toulouse, CNRS/IN2P3, Université de Toulouse)

Description

The immense scientific potential of LISA hinges on solving an unprecedented data analysis challenge: the Global Fit problem. This involves the simultaneous inference of numerous overlapping signals and instrument noise, framed in a high-dimensional Bayesian setting.

Current approaches rely on computationally intensive Markov chain Monte Carlo (MCMC) techniques with block Gibbs sampling across source classes. Yet, these methods suffer from poor scalability and slow convergence, especially in the presence of source confusion and uncertainty in source number. To address these issues, we introduce GWINESS (Gravitational Wave Inference using NEural Source Separation), a machine learning-based framework inspired by music source separation. Using an encoder-decoder neural architecture, GWINESS aims to perform blind source separation of overlapping gravitational-wave signals—analogous to isolating vocals, drums, and bass in a song.

This talk will present the core principles behind GWINESS, and discuss current limitations, and future directions for integrating ML methods in the Global Fit.

Auteur

Antsa Rasamoela (L2I Toulouse, CNRS/IN2P3, Université de Toulouse)

Documents de présentation

Aucun document.