Virtual population generation, fitting, and benchmarking.
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Updated
Jun 29, 2018 - MATLAB
Virtual population generation, fitting, and benchmarking.
A repository providing simple techniques and examples of generating random numbers from specified distributions.
This project focuses on applying advanced simulation methods for derivatives pricing. It includes Monte-Carlo, Variance Reduction Techniques, Distribution Sampling Methods, Euler Schemes, and Milstein Schemes.
Acceptance-Rejection sampling with examples in R and Python
Check if you'll get accepted into the TUM
Inverse Transform & Rejection Sampling with prob. density functions f(x) and validation functions t(x).
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