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Activity Number: 359 - Geometry and Bayes: Better Together
Type: Invited
Date/Time: Thursday, August 12, 2021 : 12:00 PM to 1:50 PM
Sponsor: International Society for Bayesian Analysis (ISBA)
Abstract #316926
Title: Adapting Viral Diffusions to the Geometry of Global Air Transport
Author(s): Andrew J Holbrook*
Companies: UCLA Biostatistics
Keywords: Bayesian phylogeography; Graphics processing unit; Hamiltonian Monte Carlo; Massive parallelization; SIMD; Bayesian multidimensional scaling
Abstract:

Big Bayes is the computationally intensive co-application of big data and large, expressive Bayesian models for the analysis of complex phenomena in scientific inference and statistical learning. Standing as an example, Bayesian multidimensional scaling (MDS) can help scientists learn viral trajectories through space and time, but its computational burden prevents its wider use. Crucial MDS model calculations scale quadratically in the number of observations. We mitigate this limitation through massive parallelization using multi-core central processing units, instruction-level vectorization and graphics processing units (GPUs). Fitting the MDS model using Hamiltonian Monte Carlo, GPUs can deliver more than 100-fold speedups over serial calculations and thus extend Bayesian MDS to a big data setting. To illustrate, we employ Bayesian MDS to infer the rate at which different seasonal influenza virus subtypes use worldwide air traffic to spread around the globe. We examine 5392 viral sequences and their associated 14 million pairwise distances arising from the number of commercial airline seats per year between viral sampling locations. To adjust for shared evolutionary history of th


Authors who are presenting talks have a * after their name.

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