NewEvery arXiv paper, its researchers & institutions — mapped.
paper

Genetic Algorithms and the Search for Viable String Vacua

arXiv:1404.7359 · doi:10.1007/JHEP08(2014)010

Abstract

Genetic Algorithms are introduced as a search method for finding string vacua with viable phenomenological properties. It is shown, by testing them against a class of Free Fermionic models, that they are orders of magnitude more efficient than a randomised search. As an example, three generation, exophobic, Pati-Salam models with a top Yukawa occur once in every 10^{10} models, and yet a Genetic Algorithm can find them after constructing only 10^5 examples. Such non-deterministic search methods may be the only means to search for Standard Model string vacua with detailed phenomenological requirements.

10 figures, 24 pages, JHEP version