Ordinal Optimisation for the Gaussian Copula Model
Optimization and Control
2021-05-14 v3 Probability
Abstract
We present results on the estimation and evaluation of success probabilities for ordinal optimisation over uncountable sets (such as subsets of ). Our formulation invokes an assumption of a Gaussian copula model, and we show that the success probability can be equivalently computed by assuming a special case of additive noise. We formally prove a lower bound on the success probability under the Gaussian copula model, and numerical experiments demonstrate that the lower bound yields a reasonable approximation to the actual success probability. Lastly, we showcase the utility of our results by guaranteeing high success probabilities with ordinal optimisation.
Cite
@article{arxiv.1911.01993,
title = {Ordinal Optimisation for the Gaussian Copula Model},
author = {Robert Chin and Jonathan E. Rowe and Iman Shames and Chris Manzie and Dragan Nešić},
journal= {arXiv preprint arXiv:1911.01993},
year = {2021}
}
Comments
18 pages, including appendices and references