TD-CARMA: Painless, accurate, and scalable estimates of gravitational-lens time delays with flexible CARMA processes
Antoine D. Meyer (1, 2), David A. van Dyk (1), Hyungsuk Tak (3,4, and 5), Aneta Siemiginowska (2) ((1) Statistics Section, Department of, Mathematics, Imperial College London, (2) Center for Astrophysics, Harvard, and Smithsonian, (3) Department of Statistics

TL;DR
TD-CARMA introduces a Bayesian approach using CARMA processes for accurate, scalable, and painless estimation of gravitational lens time delays, accounting for measurement errors and microlensing effects.
Contribution
It presents a novel Bayesian method that models light curves with CARMA processes, enabling automatic model selection and handling multi-modality without initial guesses.
Findings
Achieved more precise time delay estimates than previous methods.
Successfully applied to six gravitational lens systems.
Estimates are consistent with literature, but more accurate.
Abstract
Cosmological parameters encoding our understanding of the expansion history of the Universe can be constrained by the accurate estimation of time delays arising in gravitationally lensed systems. We propose TD-CARMA, a Bayesian method to estimate cosmological time delays by modelling the observed and irregularly sampled light curves as realizations of a Continuous Auto-Regressive Moving Average (CARMA) process. Our model accounts for heteroskedastic measurement errors and microlensing, an additional source of independent extrinsic long-term variability in the source brightness. The semi-separable structure of the CARMA covariance matrix allows for fast and scalable likelihood computation using Gaussian Process modeling. We obtain a sample from the joint posterior distribution of the model parameters using a nested sampling approach. This allows for ``painless'' Bayesian Computation,…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Statistical and numerical algorithms · Advanced Statistical Methods and Models
