The Power of Genetic Algorithms: what remains of the pMSSM?

05/09/2018
by   Steven Abel, et al.
0

Genetic Algorithms (GAs) are explored as a tool for probing new physics with high dimensionality. We study the 19-dimensional pMSSM, including experimental constraints from all sources and assessing the consistency of potential signals of new physics. We show that GAs excel at making a fast and accurate diagnosis of the cross-compatibility of a set of experimental constraints in such high dimensional models. In the case of the pMSSM, it is found that only O(10^4) model evaluations are required to obtain a best fit point in agreement with much more costly MCMC scans. This efficiency allows higher dimensional models to be falsified, and patterns in the spectrum identified, orders of magnitude more quickly. As examples of falsification, we consider the muon anomalous magnetic moment, and the Galactic Centre gamma-ray excess observed by Fermi-LAT, which could in principle be explained in terms of neutralino dark matter. We show that both observables cannot be explained within the pMSSM, and that they provide the leading contribution to the total goodness of the fit, with χ^2_δ a_μ^SUSY≈12 and χ^2_ GCE≈ 155, respectively.

READ FULL TEXT

page 12

page 19

research
09/11/1998

Genetic Algorithm for SU(2) Gauge Theory on a 2-dimensional Lattice

An algorithm is proposed for the simulation of pure SU(N) lattice gauge ...
research
06/06/2022

Deep Learning Models of the Discrete Component of the Galactic Interstellar Gamma-Ray Emission

A significant point-like component from the small scale (or discrete) st...
research
05/28/2018

High-dimensional statistical inferences with over-identification: confidence set estimation and specification test

Over-identification is a signature feature of the influential Generalize...
research
08/17/2019

Consistent Feature Construction with Constrained Genetic Programming for Experimental Physics

A good feature representation is a determinant factor to achieve high pe...
research
07/03/2017

A Distance Between Populations for n-Points Crossover in Genetic Algorithms

Genetic algorithms (GAs) are an optimization technique that has been suc...
research
07/18/2018

Genetic algorithms with DNN-based trainable crossover as an example of partial specialization of general search

Universal induction relies on some general search procedure that is doom...
research
03/28/2015

Some Further Evidence about Magnification and Shape in Neural Gas

Neural gas (NG) is a robust vector quantization algorithm with a well-kn...

Please sign up or login with your details

Forgot password? Click here to reset