Machine Learning
The research group in machine learning conducts research in fundamental principles and algorithms for machine learning, including Bayesian networks, topological data analysis, causality, and deep learning.
About the research group
We focus on fundamental principles and algorithms for machine learning. Our core competences lie in probabilistic graphical networks, topological data analysis, computational learning theory and artificial neural networks. This includes structure learning, inference, approximation algorithms, uncertainty quantification, model validation, and prediction. Group members have experience from basic research on foundational questions in the theory of machine learning all the way to algorithm implementation and machine learning applications.
People
Group members
Fabio Massimo Zennaro Associate Professor
Pekka Parviainen Associate Professor
Nello Blaser Professor
Kristian Flikka Associate Professor
Rodica Georgeta Mihai Associate Professor
Asieh Abolpour Mofrad Researcher
Samaneh Abolpour Mofrad Postdoctoral Fellow
Lars Moberg Salbu Postdoctoral Fellow
Chloe Amanda Game Postdoctoral Fellow
Marius Binner PhD Candidate
Thorir Hrafn Hardarson PhD Candidate
Jørgen Mjaaseth PhD Candidate
Heebah Saleem PhD Candidate
Willem Theodorus Schooltink PhD Candidate
Morten Blørstad PhD Candidate
Natacha Galmiche PhD Candidate
Odin Hoff Gardå PhD Candidate
Madhumita Kundu PhD Candidate
Philip Andreas Turk PhD Candidate
Grunde Haraldsson Wesenberg PhD Candidate
Emmanuel Sam PhD Candidate