Many complex real-world networks (your circle of friends, collaborations between scientists, the internet, web pages on the World Wide Web, interactions between proteins, the structure of your brain, …) can be modelled as graphs – nodes/vertices connected by edges – in a fruitful way. Even the seemigly drastic reduction of complex data to objects that may or may not share some sort of connection can expose interesting properties and phenomena. Interesting real-world networks are often extremely large, which makes them hard to describe in their entirety. One way of making these networks tractable for analysis is to treat them as randomly generated according to local rules. This gives rise to the theory of random graphs.
In this lecture we will discuss the basics of random graph theory, meet some of its models and learn about and prove some typical results.
We will start with the staple model of random graph theory: the Erdős–Rényi random graph. Even though this model is very simple, it already exhibits a number of interesting typical phenomena – most notably abrupt changes in behaviour when a parameter is varied, so-called phase transitions – and the toolbox used for its analysis – coupling techniques, comparison to branching processes, large deviation theory – can be extended to more complex models as well.
We will also introduce other random graph models that try to capture certain aspects of real-world networks better than the simple Erdős–Rényi model, namely inhomogeneous random graphs, the configuration model and preferential attachment models.
Module combinations for pre-2025 Mathematik Master
This course may be combined with Prof. Ellen Baake's Stochastische Modelle in der Biologie (https://ekvv.uni-bielefeld.de/kvv_publ/publ/vd?id=567940092) this term or Prof. Ellen Baake's Mathematische Biologie next summer term to complete the module 24-M-P1a or 24-M-P1b. Alternative arrangements may be possible upon request. Just get in touch!
In the new Mathematics Master study programme this course along with its final exam can stand on its own as 24-M-PT-ST5a or 24-M-PT-ST5b.
The course will draw heavily from Remco van der Hofstad’s excellent book Random Graphs and Complex Networks. Vol. 1. The book is available for free from the author’s website (https://www.win.tue.nl/~rhofstad/NotesRGCN.pdf) and was also published by Cambridge University Press (https://doi.org/10.1017/9781316779422).
Rhythmus | Tag | Uhrzeit | Format / Ort | Zeitraum | |
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wöchentlich | Di | 16-18 | 13.10.2025-06.02.2026 | Lecture | |
wöchentlich | Do | 14-16 | 13.10.2025-06.02.2026 | Tutorial |
Modul | Veranstaltung | Leistungen | |
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24-M-P1 Profilierung 1 | Profilierungsvorlesung (mit Übung) - Typ 2 | Studienleistung
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Studieninformation |
24-M-P1a Profilierung 1 Teil A | Profilierungsvorlesung (mit Übung) - Typ 2 | Studienleistung
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Studieninformation |
24-M-P1b Profilierung 1 Teil B | Profilierungsvorlesung (mit Übung) - Typ 2 | Studienleistung
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Studieninformation |
24-M-P2 Profilierung 2 | Profilierungsvorlesung (mit Übungen) - Typ 2 | Studienleistung
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Studieninformation |
24-M-PT-ST5a Ausgewählte Kapitel der Wahrscheinlichkeitstheorie und Statistik 1 | Lecture Selected Topics in Probability Theory and Statistics | benotete Prüfungsleistung
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Studieninformation |
Tutorials Selected Topics in Probability Theory and Statistics | Studienleistung
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Studieninformation | |
24-M-PT-ST5b Ausgewählte Kapitel der Wahrscheinlichkeitstheorie und Statistik 2 | Lecture Selected Topics in Probability Theory and Statistics | benotete Prüfungsleistung
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Studieninformation |
Tutorials Selected Topics in Probability Theory and Statistics | Studienleistung
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Studieninformation | |
24-M-PWM Profilierung Wirtschaftsmathematik | Profilierungsvorlesung (mit Übung) -Typ 2 | Studienleistung
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Studieninformation |
Die verbindlichen Modulbeschreibungen enthalten weitere Informationen, auch zu den "Leistungen" und ihren Anforderungen. Sind mehrere "Leistungsformen" möglich, entscheiden die jeweiligen Lehrenden darüber.
Module combinations for pre-2025 Mathematik Master
If combined with Prof. Ellen Baake's Stochastische Modelle in der Biologie (https://ekvv.uni-bielefeld.de/kvv_publ/publ/vd?id=567940092) the two courses "overshoot" the required 7 credits for 24-M-P1a/24-M-P1b by 1, but the module can be completed this term. If combined with Prof. Ellen Baake's Mathematische Biologie next summer term, the credit points add exactly to 7. Other combinations may also be possible: Just get in touch! (ideally as early as possible)
No special considerations are necessary for the new Mathematics Master study programme.