Uncertainty quantification for radio interferometric imaging: II. MAP estimation
Xiaohao Cai, Marcelo Pereyra, Jason D. McEwen

TL;DR
This paper introduces a fast, MAP-based approach for uncertainty quantification in radio interferometric imaging, enabling practical analysis of large data volumes with robust statistical insights.
Contribution
It develops scalable MAP estimation methods with uncertainty quantification strategies, overcoming computational limitations of traditional Bayesian sampling techniques.
Findings
MAP methods are 100,000 times faster than MCMC
Supports distributed and parallel computation
Provides uncertainty measures for realistic data volumes
Abstract
Uncertainty quantification is a critical missing component in radio interferometric imaging that will only become increasingly important as the big-data era of radio interferometry emerges. Statistical sampling approaches to perform Bayesian inference, like Markov Chain Monte Carlo (MCMC) sampling, can in principle recover the full posterior distribution of the image, from which uncertainties can then be quantified. However, for massive data sizes, like those anticipated from the Square Kilometre Array (SKA), it will be difficult if not impossible to apply any MCMC technique due to its inherent computational cost. We formulate Bayesian inference problems with sparsity-promoting priors (motivated by compressive sensing), for which we recover maximum a posteriori (MAP) point estimators of radio interferometric images by convex optimisation. Exploiting recent developments in the theory of…
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