The research group Data Mining and Machine Learning investigates novel approaches to exploratory data analysis, unsupervised, semi-supervised and supervised learning. We focus on methods for various data types including texts, graphs, high-dimensional feature vectors and other complex structures. We consider different tasks, e.g., representation learning, embedding, clustering, causality detection, classification and reinforcement learning.

The research group Data Mining and Machine Learning consists of seven work groups:

Our methods are inspired by challenges arising from different application areas, e.g. medicine, neuroscience, pharmacoinformatics, renewable energies and social sciences.

Team of research group DM

Publications of research group DM

Projects of research group DM

 News

Tutorial accepted at AAAI'26

We are proud to announce that our tutorial has been accepted at AAAI'26

Prof. Sebastian Tschiatschek im Kurier über die Bedeutung nachvollziehbarer Algorithmen

Das Projekt "Interpretability and Explainability as Drivers to Democracy" erforscht, wie maschinelles Lernen transparenter und demokratisch nachvollziehbar wird.

3 papers accepted at ICDM 2025

We are exited to announce that we got 3 papers accepted at the IEEE International Conference on Data Mining (ICDM) 2025

3 Papers accepted at NeurIPS 2025

We are happy to announce that the following three papers got accepted at the Conference on Neural Information Processing Systems (NeurIPS) 2025

Sebastian Schuster (DM) und Moritz Grosse-Wentrup (NI) über SLMs im i-presse-Magazin zur Digitalisierung der Wirtschaft

Kleine Sprachmodelle (SLMs) benötigen keine Internetverbindung, sind schnell, datenschutzfreundlich und lassen sich auf spezifische Anwendungsfälle anpassen, im Gegensatz zu...

Paper accepted at ICCV 2025

We are excited to announce that our paper "MultiADS: Defect-aware Supervision for Multi-type Anomaly Detection and Segmentation in Zero-Shot Learning" has been accepted to...