Litcius/Paper detail

Efficient sampling of constrained high-dimensional theoretical spaces with machine learning

Jacob Hollingsworth, Michael Ratz, Philip Tañedo, D. Whiteson

2021The European Physical Journal C28 citationsDOIOpen Access PDF

Abstract

Abstract Models of physics beyond the Standard Model often contain a large number of parameters. These form a high-dimensional space that is computationally intractable to fully explore. Experimental results project onto a subspace of parameters that are consistent with those observations, but mapping these constraints to the underlying parameters is also typically intractable. Instead, physicists often resort to scanning small subsets of the full parameter space and testing for experimental consistency. We propose an alternative approach that uses generative models to significantly improve the computational efficiency of sampling high-dimensional parameter spaces. To demonstrate this, we sample the constrained and phenomenological Minimal Supersymmetric Standard Models subject to the requirement that the sampled points are consistent with the measured Higgs boson mass. Our method achieves orders of magnitude improvements in sampling efficiency compared to a brute force search.

Topics & Concepts

Sampling (signal processing)Subspace topologyComputer scienceConsistency (knowledge bases)Parameter spaceSpace (punctuation)Sample (material)Higgs bosonAlgorithmGenerative modelTheoretical computer scienceApplied mathematicsMathematicsMathematical optimizationStatistical physicsArtificial intelligenceGenerative grammarPhysicsParticle physicsStatisticsFilter (signal processing)Operating systemComputer visionThermodynamicsParticle physics theoretical and experimental studiesComputational Physics and Python ApplicationsAlgorithms and Data Compression