Litcius/Paper detail

Evolving Heterotic Gauge Backgrounds: Genetic Algorithms versus Reinforcement Learning

Steven Abel, Andrei Constantin, Thomas R. Harvey, André Lukas

2022Fortschritte der Physik26 citationsDOIOpen Access PDF

Abstract

Abstract The immensity of the string landscape and the difficulty of identifying solutions that match the observed features of particle physics have raised serious questions about the predictive power of string theory. Modern methods of optimisation and search can, however, significantly improve the prospects of constructing the standard model in string theory. In this paper we scrutinise a corner of the heterotic string landscape consisting of compactifications on Calabi‐Yau three‐folds with monad bundles and show that genetic algorithms can be successfully used to generate anomaly‐free supersymmetric GUTs with three families of fermions that have the right ingredients to accommodate the standard model. We compare this method with reinforcement learning and find that the two methods have similar efficacy but somewhat complementary characteristics.

Topics & Concepts

Heterotic string theoryString (physics)Reinforcement learningGauge (firearms)Theoretical physicsString theoryMonad (category theory)Particle physicsReinforcementComputer sciencePhysicsAlgorithmMathematicsArtificial intelligencePure mathematicsEngineeringArchaeologyStructural engineeringGeographyFunctorParticle physics theoretical and experimental studiesBlack Holes and Theoretical PhysicsQuantum Chromodynamics and Particle Interactions