MATS254 Stochastic processes (4 cr)
Study level:
Advanced studies
Grading scale:
0-5
Language:
English
Responsible organisation:
Department of Mathematics and Statistics
Curriculum periods:
2017-2018, 2018-2019, 2019-2020
Description
Content
The course gives an introduction into the theory of martingales and some applications. Martingales are one of
the most important classes of stochastic processes. They are widely used in stochastic modelling and in pure mathematics itself. The content of the course is:
* martingales
* Doob's optional stopping theorem
* Doob's martingale convergence theorem
* applications (Branching Processes and Kakutani's Dichotomy Theorem)
Completion methods
Course exam and exercises. Part of the exercises may be obligatory.
Final exam is an other option.
Assessment details
The grade is based on
a) the number of points in the course exam and possibly additional points from exercises
OR
b) the number of points in the final exam.
At least half of the points are needed to pass the course.
Learning outcomes
After completion of the course, the student
* can calculate conditional expectations
* can decide whether a stochastic process is a martingale
* knows the basic conditions under which a martingale converges
* can apply martingales in stochastic modelling
* can calculate conditional expectations
* can decide whether a stochastic process is a martingale
* knows the basic conditions under which a martingale converges
* can apply martingales in stochastic modelling
Description of prerequisites
MATA280 Foundations of stochastics
Recommended: Measure theoretic foundation of probability
(MATS260 Probability 1 or MATS112 Measure and Integration Theory 2)
Recommended: Measure theoretic foundation of probability
(MATS260 Probability 1 or MATS112 Measure and Integration Theory 2)
Study materials
Lecture notes: S. Geiss. Stochastic processes in discrete time
Literature
- D. Williams. Probability with martingales, 1991, Cambridge Mathematical Textbooks; ISBN: 978-0521406055
Completion methods
Method 1
Select all marked parts
Method 2
Select all marked parts
Parts of the completion methods
x
Teaching (4 cr)
Type:
Participation in teaching
Grading scale:
0-5
Language:
English
Teaching
10/28–12/22/2019 Lectures
10/26–12/18/2020 Lectures
12/9–12/9/2020 Exam
1/20–1/20/2021 Exam
10/25–12/17/2021 Lectures
12/15–12/15/2021 Course exam
1/19–1/19/2022 Exam
10/24–12/16/2022 Lectures
12/14–12/14/2022 Course exam
1/20–1/20/2023 Course exam
10/23–12/15/2023 Lectures
12/14–12/14/2023 Course Exam
x
Exam (4 cr)
Type:
Exam
Grading scale:
0-5
Language:
English