Contrast data mining for the MSSM from strings
Abstract
We apply techniques from data mining to the heterotic orbifold landscape in order to identify new MSSM-like string models. To do so, so-called contrast patterns are uncovered that help to distinguish between areas in the landscape that contain MSSM-like models and the rest of the landscape. First, we develop these patterns in the well-known -II orbifold geometry and then we generalize them to all other orbifold geometries. Our contrast patterns have a clear physical interpretation and are easy to check for a given string model. Hence, they can be used to scale down the potentially interesting area in the landscape, which significantly enhances the search for MSSM-like models. Thus, by deploying the knowledge gain from contrast mining into a new search algorithm we create many novel MSSM-like models, especially in corners of the landscape that were hardly accessible by the conventional search algorithm, for example, MSSM-like -II models with flavor symmetry.
Keywords
Cite
@article{arxiv.1910.13473,
title = {Contrast data mining for the MSSM from strings},
author = {Erik Parr and Patrick K. S. Vaudrevange},
journal= {arXiv preprint arXiv:1910.13473},
year = {2020}
}
Comments
34 pages, 9 figures