Bootstraps to Strings: Solving Random Matrix Models with Positivity
Abstract
A new approach to solving random matrix models directly in the large limit is developed. First, a set of numerical values for some low-pt correlation functions is guessed. The large loop equations are then used to generate values of higher-pt correlation functions based on this guess. Then one tests whether these higher-pt functions are consistent with positivity requirements, e.g., . If not, the guessed values are systematically ruled out. In this way, one can constrain the correlation functions of random matrices to a tiny subregion which contains (and perhaps converges to) the true solution. This approach is tested on single and multi-matrix models and handily reproduces known solutions. It also produces strong results for multi-matrix models which are not believed to be solvable. A tantalizing possibility is that this method could be used to search for new critical points, or string worldsheet theories.
Cite
@article{arxiv.2002.08387,
title = {Bootstraps to Strings: Solving Random Matrix Models with Positivity},
author = {Henry W. Lin},
journal= {arXiv preprint arXiv:2002.08387},
year = {2021}
}
Comments
30 pages, 10 figures, 1 cartoon. See source for Mathematica notebook. v2: bootstrapped more complicated model, new Appendices. v3: journal version, v4: minor typos fixed