MVE565 / MMA630 Computational methods for stochastic differential equations Spring 26
This page contains the program of the course: lectures, exercise sessions and projects. Other information, such as learning outcomes, teachers, literature and examination, are in a separate course PM.
Program
The schedule of the course is in TimeEdit Links to an external site..
Lectures
Below you find the preliminary schedule based on the last iteration of the course. We will adapt the speed to the group and interest of the participants.
| Day | Sections | Content | Questions |
Slides & notes |
|---|---|---|---|---|
| 19/1 | ([G] Chp. 1-3) | Introduction | ||
| 22/1 | [G] 4.1 - 4.2 | Brownian motion, Itô integral |
Lecture 2 Download Lecture 2 |
|
| 26/1 | [G] 4.2 - 4.3 | remaining stochastic integral, stochastic differential equations | Lecture 3 Download Lecture 3 (see also Lecture 2) | |
| 29/1 | [G] 4.4 - (4.5), 5.1 |
Feynman-Kac formulas |
Lecture 4 Download Lecture 4 | |
| 2/2 |
[G] 5.1 - 5.2 2 (new to you) |
Euler-Maruyama scheme, strong convergence Monte-Carlo methods |
Lecture 5 Download Lecture 5 | |
| 5/2 |
[G] 5.3(-5.4), 6.1 |
Weak convergence statistical errors |
Lecture 6 Download Lecture 6 | |
| 9/2 | [G] 6.2-6.3 |
(Multilevel) Monte Carlo |
Lecture 7 Download Lecture 7 | |
| 12/2 | [G] 4-6 | Repetition [G] | Lecture 8 Download Lecture 8 | |
| 16/2 |
|
Sobolev spaces, Gelfand triplet |
Lecture 9 Download Lecture 9 | |
| 19/2 |
|
Variational formulation, Gelfand triplet, discretization, implementation |
see Lecture 9 Download Lecture 9 | |
| 23/2 |
Implementation, stability and error analysis |
Lecture 10 Download Lecture 10 | ||
| 26/2 | FE error, BS SDE and PDE, variational formulation, localization, discretization | see above & Lecture 11 | ||
| 2/3 | Discussion Project 1 | |||
|
5/3 |
[HRSW] 4.5, 8, 9 | Extensions of BS to other models and higher dimensions | ||
|
9/3 |
[HRSW] | Repetition [HRSW] and all remaining questions for both parts of the course | ||
|
12/3 |
Discussion Project 2 |
Recommended exercises
Preliminary list of exercises that might be adapted.
| Day | Exercises |
|---|---|
| 20/1 |
Introduction to exercises. |
| 27/1 |
4.1-4.2 ES1.pdf Download ES1.pdf |
| 3/2 |
4.3-4.4 ES2.pdf Download ES2.pdf |
| 10/2 |
Questions for Project 1 |
| 17/2 | |
|
24/2 |
|
| 3/3 |
Questions for Project 2 |
| 10/3 |
|
Exercises and hints for exercise sessions: Here
Projects
Two projects can be handed in for up to four bonus points per project on the ordinary exam. Reports are written and submitted individually.
Project 1 Download Project 1: deadline February 23, 2026, 07:00
Project 2 Download Project 2: deadline March 9, 2026, 07:00
Reference literature:
-
[G] Emmanuel Gobet: Monte-Carlo Methods and Stochastic Processes: From Linear to Non-Linear Links to an external site., CRC, 2016
- [KP] Peter Kloeden, Eckhard Platen: Numerical Solutions of Stochastic Differential Equations Links to an external site., Springer, 1992
- [
- Learning MATLAB, Tobin A. Driscoll. Provides a brief introduction to Matlab to the one who already knows computer programming. Available as e-book from Chalmers library Links to an external site..
- Physical Modeling in MATLAB 3/E, Allen B. Downey
The book is free to download from the web Links to an external site.. The book gives an introduction for those who have not programmed before. It covers basic MATLAB programming with a focus on modeling and simulation of physical systems.
Course summary:
| Date | Details | Due |
|---|---|---|