Open topics for theses and practical courses
Unless otherwise specified, all topics are available as practical course (P1/P2), Data Science projects, bachelor or master thesis.
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Deep Learning for Archaeological Analysis: Classification and Clustering of Roman Brick Stamps [Master Thesis]
Effect of Modern Optimizers on Deep Reinforcement Learning [Practical Course or Bachelor Thesis]
Layer Normalization in Deep Reinforcement Learning
Optimization and Exploration in Deep Reinforcement Learning [Bachelor or Master Thesis]
Exploring the Impact of Floating-Point Arithmetic on the Expressivity of Graph Neural Networks (GNNs) [Practical Course or Bachelor Thesis]
The Importance of Node & Edge features in Chemical Graphs for Molecular Property Prediction [Bachelor or Master Thesis]
Investigating Factors for Effective Transfer-Learning with Chemical Graphs [Practical Course or Bachelor Thesis]
On the effectiveness and quality of outputs from large language models
Single-Cell Gene Expression Analysis [Practical Course or Bachelor Thesis]
Interactive Visualization of single-cell multiomics Datasets [Practical Course]
Predicting solar thermal heat production [Master Thesis]
Fault Detection for solar thermal plants [Master Thesis]
Automatic tracking of individual cancer organoid in 3D from optical coherence tomography images [Master Thesis]
Semantic Segmentation of cancer organoids for chemotherapy treatment efficacy prediction [Master Thesis]
Domain Knowledge in Performative Prediction
Developing anonymized datasets for Graph Neural Networks [Bachelor Thesis]
The source of errors in causal discovery [Master Thesis]
Investigation into the Assumptions of Causal Learning Methods [Master Thesis]
Efficient Knowledge Distillation from Graph Neural Networks for Scalable e-Commerce Recommendation Systems
Applications of data mining / machine learning in weather prediction and climate science at GeoSphere Austria
Knowledge Discovery From Deep Learning Models
Inverse Reinforcement Learning Under Embodiment Mismatch
Causal Abstractions in Reinforcement Learning
Understanding AI Systems Supporting Sequential Decision-Making
Building self-explanatory transparent models
The Complexity of Computing the Graph Edit Distance
Reinforcement Learning for improving mental health treatments
Efficient algorithms for uncertain graphs [Master Thesis]
Common Subgraph Problems in Tree-Like Graphs
Interpretable and Explainable Deep Learning
Dynamic Information Acquisition in Questionnaires
Deep Probabilistic Clustering for Heterogeneous and Incomplete Data
Multi-agent Teaching Primitives
Abstraction in Reinforcement Learning
Oracle analysis of distant supervision errors
Weakly supervised discourse relation prediction
Incomplete Schema Relation Clustering
Weakly supervised learning with latent class predictions
Gradient matching for semi-supervised learning
Threshold-finding for knowledge-base completion using Gaussian processes
Path-based knowledge-base completion
Better sentence representations based on BERT
Explainable Policies for Game Play [Master Thesis]
The Cost of Feedback
Reinforcement Learning from Implicit and Explicit Feedback
Machine Learning for Personalized Education [Practical Course or Bachelor Thesis]
Reward Inference for Sequential Decision Making from Diverse and Implicit Feedback [Master Thesis]
Imitation Learning Under Domain Mismatch
Posterior Consistency in Partial Variational Autoencoders
Completed
- Melanija Kraljevska (Data Science), Master Thesis: "Classification of treatment response in depression patients using motif discovery" (supervised by Claudia Plant and co-supervised by Katerina Schindlerova), winter term 2023/2024
- Luis Caumel Morales (Data Science), Master Thesis: "Clustering of Wind Related Time Series in a Wind Turbine Farm" (supervised by Claudia Plant and co-supervised by Katerina Schindlerova), winter term 2023/2024
- Rainer Wöss, Bachelor Thesis: "Visualization of spatio-temporal influences of wind related meteorogical variables in a wind turbine farm in Andau", (supervised by Katerina Schindlerova), summer term 2023
- Alexander Pintsuk, Bachelor Thesis: "Visualization of causal inference for wind turbine extreme events", (supervised by Katerina Schindlerova), winter term 2022/2023
- Christina Pacher (Scientific Computing), Master Thesis: "Analysis of an EEG Database of Depression Patients by means of Graphical Granger Causality" (supervised by Claudia Plant and co-supervised by Katerina Schindlerova), winter term 2022/2023
- Mykola Lazarenko (Business Analytics), Master Thesis: "Clustering brain regions by similar interaction patterns based on multivariate neural signals for identifying the response to antidepressants" (supervised by Claudia Plant and co-supervised by Katerina Schindlerova), winter term 2022/2023
- Wei Chen, Bachelor Thesis: "Mining Brain Networks", winter term 2022/2023
- Kejsi Hoxhallari, Bachelor Thesis: "Statistical validation and visualization of causal inference with extremes in wind-turbine data set", winter term 2022/2023
- Daan Scheepens, Master Thesis: "A deep convolutional RNN model for spatio-temporal prediction of wind speed extremes in the short-to-medium range for wind energy applications", winter term 2021/2022
- Yigit Berkay Bozkurt, Bachelor Thesis: "Anomaly Detection by Heterogenous Graphical Granger Causality and its Application to Climate Data", 2019
- Christina Pacher, Bachelor Thesis: "Clustering Weather Stations: A Clustering Application for Meteorological Data", summer term 2019
- Thomas Spendlhofer, Bachelor Thesis: "Evaluating the usage of Tensor Processing Units (TPUs) for unsupervised learning on the example of the k-means algorithm", summer term 2019
- Ernst Naschenweng, Bachelor Thesis: "A cache optimized implementation of the Floyd-Warshall Algorithm", summer term 2018
- Hermann Hinterhauser, Bachelor Thesis: "ITGC: Information-theoretic grid-based clustering", summer term 2018, accepted paper in EDBT 2019 (download available here)
- Mahmoud A. Ibrahim, Bachelor Thesis: "Parameter Free Mixed-Type Density-Based Clustering", winter term 2017/2018, accepted paper in DEXA 2018 (download available here)
- Markus Tschlatscher: "Space-Filling Curves for Cache Efficient LU Decomposition", winter term 2017/2018
- Theresa Fruhwuerth, Master Thesis: "Uncovering High Resolution Mass Spectrometry Patterns through Audio Fingerprinting and Periodicity Mining Algorithms: An Exploratory Analysis", summer term 2017
- Robert Fritze, PR1 "Combining spatial information and optimization for locating emergency medical service stations: A case study for Lower Austria", summer term 2017
- Alexander Pfundner, PR2 "Integration of Density-based and Partitioning-based Clustering Methods", summer term 2017
- Anton Kovác, Katerina Hlavácková-Schindler, Erasmus project, "Graphical Granger Causality for Detection Temporal Anomalies in EEG Data", winter term 2016/2017 (download available here)