Activities per year
Abstract
We apply neural posterior estimation for fast-and-accurate hierarchical Bayesian inference of gravitational wave populations. We use a normalizing flow to estimate directly the population hyper-parameters from a collection of individual source observations. This approach provides complete freedom in event representation, automatic inclusion of selection effects, and (in contrast to likelihood estimation) without the need for stochastic samplers to obtain posterior samples. Since the number of events may be unknown when the network is trained, we split into subpopulation analyses that we later recombine; this allows for fast sequential analyses as additional events are observed. We demonstrate our method on a toy problem of dark siren cosmology, and show that inference takes just a few minutes and scales to ∼600 events before performance degrades. We argue that neural posterior estimation therefore represents a promising avenue for population inference with large numbers of events.
Original language | English |
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Article number | 064056 |
Number of pages | 21 |
Journal | Physical Review D |
Volume | 109 |
Issue number | 6 |
DOIs | |
Publication status | Published - 18 Mar 2024 |
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Dive into the research topics of 'Gravitational wave populations and cosmology with neural posterior estimation'. Together they form a unique fingerprint.Activities
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Gravitational Wave Analysis in the Era of Machine Learning
Leyde, K. (Presented paper)
10 Jan 2025Activity: Participating in or organising an event types › Participation in workshop, seminar, course
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Seminar to Centre for Particle Physique and Astrophysics
Leyde, K. (Speaker)
11 Dec 2024Activity: Talk or presentation types › Invited talk
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Seminar to LIGO Lab
Leyde, K. (Speaker)
30 Oct 2024Activity: Talk or presentation types › Oral presentation
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Seminar at IAIFI Journal Club
Leyde, K. (Speaker)
29 Oct 2024Activity: Talk or presentation types › Oral presentation