Machine Learning the 6d Supergravity Landscape
Nathan Brady, David Tennyson, Thomas Vandermeulen

TL;DR
This paper demonstrates how machine learning algorithms can effectively analyze and classify complex 6-dimensional supergravity models, revealing features of the string landscape and swampland with high accuracy.
Contribution
It introduces the use of autoencoders and classifiers to analyze supergravity models, providing new insights into their clustering and rarity within the landscape.
Findings
Autoencoder compresses models into 2D clusters revealing features.
Outlier models identified that are rare in the landscape.
Supervised classifiers achieve high precision in predicting model consistency.
Abstract
In this paper, we apply both supervised and unsupervised machine learning algorithms to the study of the string landscape and swampland in 6-dimensions. Our data are the (almost) anomaly-free 6-dimensional supergravity models, characterised by the Gram matrix of anomaly coefficients. Our work demonstrates the ability of machine learning algorithms to efficiently learn highly complex features of the landscape and swampland. Employing an autoencoder for unsupervised learning, we provide an auto-classification of these models by compressing the Gram matrix data to 2-dimensions. Through compression, similar models cluster together, and we identify prominent features of these clusters. The autoencoder also identifies outlier models which are difficult to reconstruct. One of these outliers proves to be incredibly difficult to combine with other models such that the…
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Taxonomy
TopicsBlack Holes and Theoretical Physics · Quantum many-body systems · Quantum Chromodynamics and Particle Interactions
MethodsSparse Evolutionary Training
