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Computing Star Discrepancies with Numerical Black-Box Optimization Algorithms

29 June 2023
François Clément
Diederick Vermetten
Jacob De Nobel
Alexandre D. Jesus
L. Paquete
Carola Doerr
ArXiv (abs)PDFHTML
Abstract

The L∞L_{\infty}L∞​ star discrepancy is a measure for the regularity of a finite set of points taken from [0,1)d[0,1)^d[0,1)d. Low discrepancy point sets are highly relevant for Quasi-Monte Carlo methods in numerical integration and several other applications. Unfortunately, computing the L∞L_{\infty}L∞​ star discrepancy of a given point set is known to be a hard problem, with the best exact algorithms falling short for even moderate dimensions around 8. However, despite the difficulty of finding the global maximum that defines the L∞L_{\infty}L∞​ star discrepancy of the set, local evaluations at selected points are inexpensive. This makes the problem tractable by black-box optimization approaches. In this work we compare 8 popular numerical black-box optimization algorithms on the L∞L_{\infty}L∞​ star discrepancy computation problem, using a wide set of instances in dimensions 2 to 15. We show that all used optimizers perform very badly on a large majority of the instances and that in many cases random search outperforms even the more sophisticated solvers. We suspect that state-of-the-art numerical black-box optimization techniques fail to capture the global structure of the problem, an important shortcoming that may guide their future development. We also provide a parallel implementation of the best-known algorithm to compute the discrepancy.

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