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Statistical learning and stochastic processes (2025/2026: Periode 2)
Cursusdoel
- specify a stochastic process appropriate to model a given dynamic system
- conduct analytical derivations on the behavior of the stochastic process
- conduct simulations of the stochastic process
- estimate the parameters of a stochastic process from data
- perform hypothesis tests to test a given stochastic model, or to compare different models
- select an appropriate model from a number of candidates using scoring functions (AIC/BIC)
The final grade consists of:
- written exam (60% of the final mark)
- 2 practical assignments (20% each)
For each of the assignments, the minimum grade to pass is 6.
If an assignment is failed, then it can be redone. The maximum grade for a retake is 7.
To qualify for a repair of the final result the mark needs to be at least a 4, or “AANV”.
Vakinhoudelijk
This course introduces stochastic processes to model complex, dynamic systems.
First we discuss a number of important stochastic processes such as Markov chains and Poisson processes. We study their properties, and discuss how to determine the probabilities of different events for a given stochastic process
both analytically and through simulation.
Then we turn to the problem of estimating the parameters of stochastic processes, e.g. the transition probabilities of a Markov chain, from data. Here we enter the area of statistical inference.
As a possible area of application, think of an airport where data is available on the number of passengers present, the duration of their stay at the airport premises, the facilities used, etc. All these data can be used to specify a stochastic process,
which supports the analysis of the system (e.g., how busy is the airport expected to be tomorrow) as well as decision-making (e.g., the increase/decrease of the number of check-in desks).
The course provides students with the skills to use data for model specification (stochastic processes), model analysis and decision-making.
List of topics:
1. Monte Carlo simulation
2. Markov Chains, Poisson processes
3. Gaussian processes
4. Markov decision processes
5. statistical inference for Markov chains and Poisson processes
6. linear regression, autoregressive models
Course form
2 lectures every week, and 1 tutorial session every week. The lectures and the tutorials are on campus.
Werkvormen
Werkcollege
Toetsing
Eindresultaat
Verplicht | Weging 100% | ECTS 7,5
Ingangseisen en voorkennis
Ingangseisen
Je moet een geldige toelatingsbeschikking hebben
Voorkennis
Knowledge of probability and statistics, multivariable calculus, linear algebra, algorithms and data structures.<br> Ability to (learn how to) program in Python or R.
Voertalen
- Engels
Cursusmomenten
Tentamens
Er is geen tentamenrooster beschikbaar voor deze cursus
Verplicht materiaal
Er is geen informatie over de verplichte literatuur bekend
Aanbevolen materiaal
-
LIT LIJST- H.M. Taylor & S. Karlin, "An introduction to stochastic models", third edition. Academic Press, 1998<br> - Dekking, F.M., Kraaikamp, C., Lopuhaa, H.P., Meester, L.E., "A Modern Introduction to Probability and Statistics: Understanding why and how". Springer Science & Business Media, 2005.
Coördinator
| dr. A.J. Feelders | A.J.Feelders@uu.nl |
Docenten
| dr. A.J. Feelders | A.J.Feelders@uu.nl |
| dr. P. Sinitcyn | p.sinitcyn@uu.nl |
Inschrijving
Inschrijving
Van maandag 15 september 2025 tot en met vrijdag 26 september 2025
Na-inschrijving
Van maandag 20 oktober 2025 tot en met dinsdag 21 oktober 2025
Inschrijving niet geopend
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