CombineHarvesterFlow: Joint Probe Analysis Made Easy with Normalizing Flows
Abstract
We show how to efficiently sample the joint posterior of two non-covariant experiments with a large set of nuisance parameters. Specifically, we train an ensemble of normalizing flows to learn the posterior distribution of both experiments. Once trained, we can use the flows to reweight O (109) samples from both measurements to compute the joint posterior in seconds -- saving up to O(1) ton of CO2 per Monte Carlo run. Using this new technique we find joint constraints between the Dark Energy Survey 3 × 2 point measurement, South Pole Telescope and Planck CMB lensing and a BOSS direct fit full shape analyses, for the first time. We find m = 0.32+0.01-0.01 and S8 = 0.79 +0.01 -0.01. We release a public package called CombineHarvesterFlow (https://github.com/pltaylor16/CombineHarvesterFlow) which performs these calculations.
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