Quasi-Monte Carlo Software

Autor: Choi, Sou-Cheng T., Hickernell, Fred J., Jagadeeswaran, R., McCourt, Michael J., Sorokin, Aleksei G.
Rok vydání: 2021
Předmět:
Druh dokumentu: Working Paper
Popis: Practitioners wishing to experience the efficiency gains from using low discrepancy sequences need correct, robust, well-written software. This article, based on our MCQMC 2020 tutorial, describes some of the better quasi-Monte Carlo (QMC) software available. We highlight the key software components required by QMC to approximate multivariate integrals or expectations of functions of vector random variables. We have combined these components in QMCPy, a Python open-source library, which we hope will draw the support of the QMC community. Here we introduce QMCPy.
Comment: 25 pages, 7 figures, to be published in the MCQMC2020 Proceedings
Databáze: arXiv