Variational Inference as an alternative to MCMC for parameter estimation and model selection
Geetakrishnasai Gunapati, Anirudh Jain, P.K. Srijith, Shantanu Desai

TL;DR
This paper demonstrates that variational inference offers a faster, scalable alternative to traditional MCMC methods for parameter estimation and model selection in astrophysics, with comparable accuracy.
Contribution
It introduces a new variational inference approach and a novel evidence estimation method (PWISE) for Bayesian model selection in astrophysics.
Findings
Variational inference is significantly faster than MCMC and nested sampling.
The method provides competitive results in diverse astrophysical problems.
The analysis codes are publicly available for reproducibility.
Abstract
Most applications of Bayesian Inference for parameter estimation and model selection in astrophysics involve the use of Monte Carlo techniques such as Markov Chain Monte Carlo (MCMC) and nested sampling. However, these techniques are time consuming and their convergence to the posterior could be difficult to determine. In this work, we advocate Variational inference as an alternative to solve the above problems, and demonstrate its usefulness for parameter estimation and model selection in Astrophysics. Variational inference converts the inference problem into an optimization problem by approximating the posterior from a known family of distributions and using Kullback-Leibler divergence to characterize the difference. It takes advantage of fast optimization techniques, which make it ideal to deal with large datasets and makes it trivial to parallelize on a multicore platform. We also…
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