Inhalt

[ 201WTMSSTSU22 ] UE Stochastic Simulation

Versionsauswahl
Workload Education level Study areas Responsible person Hours per week Coordinating university
1,5 ECTS B3 - Bachelor's programme 3. year Mathematics Evelyn Buckwar 1 hpw Johannes Kepler University Linz
Detailed information
Original study plan Bachelor's programme Technical Mathematics 2025W
Learning Outcomes
Competences
Students are acquainted with the fundamental principles of stochastic simulation and the key algorithmical techniques required for computationally modelling and analysing stochastic processes.
Skills Knowledge
  • Simulate random numbers from a uniform distribution using techniques such as modular arithmetic and linear/mixed congruential generators.
    * Assess the quality and performance of random number generators.
  • Differentiate between random numbers and pseudo-random numbers.
  • Simulate pseudo random numbers from various distributions using methods like the inverse transform method, rejection sampling, acceptance-rejection method, composition method, and ad-hoc methods.
  • Simulate stochastic processes including random walks, Markov chains, Poisson processes, and Wiener processes and their extensions.
  • Distinguish between exact simulation methods and numerical approximation methods for random variables and stochastic processes.
  • Simulate simple stochastic differential equations (SDEs) ( learn/recall Ito's formula, simulate geometric Brownian motion, Wiener processes with drift, and the Ornstein-Uhlenbeck process).
  • Apply numerical methods for solving SDEs, including the Euler-Maruyama method and the Milstein method.
  • Compute the root mean square error (RMSE) to evaluate the simulations results.
  • Conduct Monte Carlo simulations for various applications and implement variance reduction techniques (Analytical reduction, stratified sampling, importance sampling, use of covariates).
Fundamental concepts of stochastic processes, techniques for random number generation, methods for simulating Markov chains and other stochastic models, Monte-Carlo simulation, practical applications of stochastic simulations in various fields, evaluation and interpretation of the results of stochastic simulations.
Criteria for evaluation
Language English and French
Changing subject? No
Earlier variants They also cover the requirements of the curriculum (from - to)
201WTMSSTSU20: UE Stochastic simulation (2020W-2022S)
TMCPAUESIMU: UE Stochastic simulation (2004S-2020S)
On-site course
Maximum number of participants 25
Assignment procedure Direct assignment