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arxiv: 2302.03046 · v1 · pith:5SN6ZWG4 · submitted 2023-02-06 · astro-ph.IM

Beyond Gaussian Noise: A Generalized Approach to Likelihood Analysis with non-Gaussian Noise

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classification astro-ph.IM
keywords noiselikelihoodanalysisnon-gaussianapproachdatadensitygravitational
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Likelihood analysis is typically limited to normally distributed noise due to the difficulty of determining the probability density function of complex, high-dimensional, non-Gaussian, and anisotropic noise. This is a major limitation for precision measurements in many domains of science, including astrophysics, for example, for the analysis of the Cosmic Microwave Background, gravitational waves, gravitational lensing, and exoplanets. This work presents Score-based LIkelihood Characterization (SLIC), a framework that resolves this issue by building a data-driven noise model using a set of noise realizations from observations. We show that the approach produces unbiased and precise likelihoods even in the presence of highly non-Gaussian correlated and spatially varying noise. We use diffusion generative models to estimate the gradient of the probability density of noise with respect to data elements. In combination with the Jacobian of the physical model of the signal, we use Langevin sampling to produce independent samples from the unbiased likelihood. We demonstrate the effectiveness of the method using real data from the Hubble Space Telescope and James Webb Space Telescope.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Gravitational-Wave Parameter Estimation in non-Gaussian noise using Score-Based Likelihood Characterization

    astro-ph.IM 2024-10 unverdicted novelty 6.0

    Score-based diffusion models learn the empirical distribution of real LIGO noise to enable unbiased gravitational-wave parameter estimation under only an additivity assumption.