1 code implementation • 17 Jul 2024 • Christian Nauck, Rohan Gorantla, Michael Lindner, Konstantin Schürholt, Antonia S. J. S. Mey, Frank Hellmann
The geometry of a graph is encoded in dynamical processes on the graph.
1 code implementation • 24 Jun 2024 • Yefan Zhou, Jianlong Chen, Qinxue Cao, Konstantin Schürholt, Yaoqing Yang
This paper considers "model diagnosis", which we formulate as a classification problem.
1 code implementation • 14 Jun 2024 • Konstantin Schürholt, Michael W. Mahoney, Damian Borth
Learning representations of well-trained neural network models holds the promise to provide an understanding of the inner workings of those models.
no code implementations • 26 Apr 2023 • Dominik Honegger, Konstantin Schürholt, Damian Borth
With this paper, we address that gap by applying two popular sparsification methods on populations of models (so called model zoos) to create sparsified versions of the original zoos.
1 code implementation • 21 Dec 2022 • Christian Nauck, Michael Lindner, Konstantin Schürholt, Frank Hellmann
To mitigate climate change, the share of renewable needs to be increased.
1 code implementation • 29 Sep 2022 • Konstantin Schürholt, Boris Knyazev, Xavier Giró-i-Nieto, Damian Borth
Learning representations of neural network weights given a model zoo is an emerging and challenging area with many potential applications from model inspection, to neural architecture search or knowledge distillation.
1 code implementation • 29 Sep 2022 • Konstantin Schürholt, Diyar Taskiran, Boris Knyazev, Xavier Giró-i-Nieto, Damian Borth
With this work, we publish a novel dataset of model zoos containing systematically generated and diverse populations of NN models for further research.
1 code implementation • 22 Jul 2022 • Konstantin Schürholt, Boris Knyazev, Xavier Giró-i-Nieto, Damian Borth
Learning representations of neural network weights given a model zoo is an emerging and challenging area with many potential applications from model inspection, to neural architecture search or knowledge distillation.
1 code implementation • 10 Jun 2022 • Christian Nauck, Michael Lindner, Konstantin Schürholt, Frank Hellmann
As a testbed for GNN models, we generate new, large datasets of dynamic stability of synthetic power grids, and provide them as an open-source resource to the research community.
1 code implementation • NeurIPS 2021 • Konstantin Schürholt, Dimche Kostadinov, Damian Borth
Self-Supervised Learning (SSL) has been shown to learn useful and information-preserving representations.
1 code implementation • 18 Aug 2021 • Christian Nauck, Michael Lindner, Konstantin Schürholt, Haoming Zhang, Paul Schultz, Jürgen Kurths, Ingrid Isenhardt, Frank Hellmann
We investigate the feasibility of applying graph neural networks (GNN) to predict dynamic stability of synchronisation in complex power grids using the single-node basin stability (SNBS) as a measure.
no code implementations • 18 Jun 2020 • Konstantin Schürholt, Damian Borth
We show that the model trajectories can be separated and the order of checkpoints on the trajectories recovered, which may serve as a first step towards DNN model versioning.