Dr. Michael Steininger, M.Sc.
Chair of Data Science (Informatik X)
University of Würzburg
Am Hubland
97074 Würzburg
Germany
Email: steininger@informatik.uni-wuerzburg.de
Phone: (+49 931) 31 - 89482
Office: Room B108 (Computer Science Building M2)
Projects and Research Interests
I joined the DMIR group for my PhD studies after receiving my master's degree in Computer Science at the university of Würzburg in early 2018. As a member of the BigData@Geo project, I am working on climate and air pollution modeling using Deep Learning techniques. I am also interested in methods for tackling data imbalance in regression tasks.
Teaching
Summer Term 2021:
Summer Term 2020:
Summer Term 2019:
Winter Term 2018/19:
Summer Term 2018:
Awards
- Best ML Innovation Award: "Deep Learning for Climate Model Output Statistics", Michael Steininger, Daniel Abel, Katrin Ziegler, Anna Krause, Heiko Paeth, Andreas Hotho at Tackling Climate Change with Machine Learning Workshop at NeurIPS 2020 (link)
- Best Student Paper Award: "Evaluating the multi-task learning approach for land use regression modelling of air pollution", Andrzej Dulny, Michael Steininger, Florian Lautenschlager, Anna Krause, Andreas Hotho at FAIML 2020 (link)
Publications
-
ConvMOS: Climate Model Output Statistics with Deep Learning in Data Mining and Knowledge Discovery, (P. Cellier; K. Dembczynski; A. Zimmermann; E. Devijver, Eds.) (2022).
-
Semi-unsupervised Learning for Time Series Classification in Milets@KDD (2022).
-
Do Different Deep Metric Learning Losses Lead to Similar Learned Features? in Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV) (2021). 10644–10654.
-
Evaluating the multi-task learning approach for land use regression modelling of air pollution in Journal of Physics: Conference Series (2021). 1834(1) 012004.
-
Anomaly Detection in Beehives: An Algorithm Comparison (2021).
-
Semi-unsupervised Learning: An In-depth Parameter Analysis S. Edelkamp, R. M{\"o}ller, E. Rueckert (Eds.) (2021). 51–66.
-
DETECTING PRESENCE OF SPEECH IN ACOUSTIC DATA OBTAINED FROM BEEHIVES in DCASE Workshop (2021).
-
Semi-Supervised Learning for Grain Size Distribution Interpolation (2021). 34–44.
-
Density-based weighting for imbalanced regression in Machine Learning, (A. Appice; S. Escalera; J. A. Gamez; H. Trautmann, Eds.) (2021). 110(8) 2187–2211.
-
MapLUR: Exploring a New Paradigm for Estimating Air Pollution Using Deep Learning on Map Images in ACM Trans. Spatial Algorithms Syst. (2020). 6(3)
-
Deep Learning for Climate Model Output Statistics in NeurIPS 2020 Workshop on Tackling Climate Change with Machine Learning (2020).
-
SimLoss: Class Similarities in Cross Entropy (2020). 431–439.
-
OpenLUR: Off-the-shelf air pollution modeling with open features and machine learning in Atmospheric Environment (2020). 233 117535.
-
Anomaly Detection in Beehives using Deep Recurrent Autoencoders (2020). 142–149.
-
EveryAware Gears: A Tool to visualize and analyze all types of Citizen Science Data D. Burghardt, S. Chen, G. Andrienko, N. Andrienko, R. Purves, A. Diehl (Eds.) (2018).
Other scientific activities
- Reviewer for Nature Energy
- Reviewer for Atmospheric Pollution Research
- PC Member for Tackling Climate Change with Machine Learning Workshop at ICML 2021 and NeurIPS 2021
- Subreviewer for several conferences and journals