MonteCarlo and Quasi-MonteCarlo methods for the valuations of spread and lookback finantial options.
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Updated
Apr 24, 2023 - MATLAB
MonteCarlo and Quasi-MonteCarlo methods for the valuations of spread and lookback finantial options.
Final assessment for "Monte Carlo methods and sampling for computing course" within the PhD program in Information Engineering of the Department of Information Engineering @ University of Pisa, A.A. 2022/2023
Code of the paper The Robust Randomized Quasi Monte Carlo method, applications to integrating singular functions by E. Gobet M. Lerasle and D. Métivier
The aim of this project is to compare different pricing methods for an Asian option. Comparisons will be made in terms of MSE, CPU time and (empirical) variance of estimators.
R package with quasi-Monte Carlo methods to estimate mixed models commonly used for random effect structures from pedigrees.
This repository contains the source code for my MSc Project on "Scalable Inference for Generative Models using Quasi-Monte Carlo" at the Department of Statistical Science, UCL.
Fast construction of Gaussian Process Regression models supporting gradient information.
Some randomization methods for Randomized Quasi Monte Carlo e.g. scrambling, shift
A simple quasi-random number generator implemented in C++ for generating low discrepancy sequences in any number of dimensions.
Quasi-Monte-Carlo numerical computation of multivariate normal probabilities
Robust estimations from distribution structures: III. Non-asymptotic
(t, m, s)-nets generator / Генератор (t, m, s)-сетей
Samplin' Safari is a research tool to visualize and interactively inspect high-dimensional (quasi) Monte Carlo samplers.
generation of Sobol low-discrepancy sequence (LDS) for the Julia language
Lightweight and easy generation of quasi-Monte Carlo sequences with a ton of different methods on one API for easy parameter exploration in scientific machine learning (SciML)
Sequential Monte Carlo in python
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