Team

Group photo of the Quantitative Network Science group

Alexandre Bovet

Alexandre Bovet, Prof. Dr.

Room number
Y27 K12
 

Alexandre is the founder and head of the Quantitative Network Science group. His team develops machine learning methods and mathematical models to provide quantitative answers to social, biological, and economic questions.

Yasaman Asgari

Yasaman Asgari

 

Yasaman Asgari is a PhD student in Data Science at the Department of Mathematical Modeling and Machine Learning (DM3L) and Digital Society Initiative (DSI) at the University of Zurich since September 2023. Before her doctoral studies, Yasaman earned her Master’s degree in Computer Science from École Normale Supérieure de Lyon, France, where she explored building evaluation settings for testing dynamic community detection in fine-grained temporal networks. Her research interests include complex systems, temporal networks, and dynamic community detection with applications to real-world problems.

Samuel Koovely

Samuel Koovely

 

Samuel has been a member of the Quantitative Network Science group since August 2022. Before joining the Department of Mathematical Modeling and machine learning (DM3L) as a PhD student, he received a BSc and MSc in mathematics from ETH Zurich. During his Master’s thesis, he worked on a graphical model for predicting protein-protein interactions as an intern at the IBM Research Lab in Zurich. His main research interest is the study of stochastic processes and statistical properties of temporal networks, particularly the use of diffusion processes over graphs and tools from information theory to investigate the structural properties of these systems. More broadly, he is interested in topics at the intersection of probability theory and statistics, such as Markov processes, graphical models, machine learning, and causal inference.

Dorian Quelle

Dorian Quelle

 

Dorian is a PhD Candidate in the Quantitative Network Science Group (DM3L) at the University of Zurich, supervised by Prof. Alexandre Bovet. His research focuses on computational social science and network analysis, particularly investigating multilingual misinformation, polarisation, and algorithmic curation through the analysis of social media networks. His current research examines the spread of misinformation, network topology, and social media dynamics. He works to develop computational methods to understand and combat the spread of misinformation across linguistic and platform boundaries. Alongside his academic work, Dorian is a Data Scientist at Pattrn.AI. He holds an MSc in Social Data Science with Distinction from the Oxford Internet Institute, where he currently serves as a Visiting Researcher under the supervision of Scott Hale.

Yuan Zhang

Yuan Zhang

 

Yuan is a Ph.D. student in the Department of Communication and Media Research (IKMZ) at the University of Zurich, co-supervised by Alexandre Bovet at the DM3L. She holds Master’s degrees in Social Data Science from the Oxford Internet Institute and Political Economy and Political Science from the London School of Economics. She is a visiting scholar at the Annenberg School for Communication, affiliated with the Center for Information Networks and Democracy (CIND). She examines the complexity of individuals’ political selective exposure and investigates the mechanisms driving the spread of incivility on social media using computational methods, including natural language processing (NLP), large language models (LLMs), and complex network analysis. Her work aims to integrate the analytical power of computational and network modeling with the interpretive depth of communication theory.

Master Students

  • Rathes Sriram (2023–2024)
  • Andrin Rehmann (2023–2024)