The use of computer simulations as models of real-world phenomena plays an increasingly important role in science and engineering. Such models allow us to build hypotheses about the processes underlying a phenomenon and to test them, e.g., by simulating synthetic data from the model and comparing it to observed data. A key challenge in this approach is to find those model configurations that reproduce the observed data. Bayesian statistical inference provides a principled way to address this challenge, allowing us to infer multiple suitable model configurations and quantify uncertainty. However, classical Bayesian inference methods typically require access to the model's likelihood function and thus cannot be applied to many commonly ...
This thesis comprises the modelling of and parameter estimation in dynamical systems, with a focus o...
During the past two decades, the focus of biological investigation has begun to shift from reductive...
Several methods for optimization of model parameters, uncertainty quantification and uncertainty red...
This thesis presents SALMA (Simulation and Analysis of Logic-Based Multi- Agent Models), a new appr...
Abstract The presented work concerns visual, aural, and multimodal aspects of spatial perceptio...
Abstract The presented work concerns visual, aural, and multimodal aspects of spatial perceptio...
Abstract The presented work concerns visual, aural, and multimodal aspects of spatial perceptio...
Ordinary differential equations are ubiquitous in science and engineering, as they provide mathemati...
Ordinary differential equations are ubiquitous in science and engineering, as they provide mathemati...
This thesis presents SALMA (Simulation and Analysis of Logic-Based Multi- Agent Models), a new appr...
Due to the ability to model even complex dependencies, machine learning (ML) can be used to tackle a...
Due to the ability to model even complex dependencies, machine learning (ML) can be used to tackle a...
The social alignment of the human mind is omnipresent in our everyday life and culture. Yet, what me...
Stochastic modelling of biochemical reaction networks is getting more and more popular. Throughout t...
The social alignment of the human mind is omnipresent in our everyday life and culture. Yet, what me...
This thesis comprises the modelling of and parameter estimation in dynamical systems, with a focus o...
During the past two decades, the focus of biological investigation has begun to shift from reductive...
Several methods for optimization of model parameters, uncertainty quantification and uncertainty red...
This thesis presents SALMA (Simulation and Analysis of Logic-Based Multi- Agent Models), a new appr...
Abstract The presented work concerns visual, aural, and multimodal aspects of spatial perceptio...
Abstract The presented work concerns visual, aural, and multimodal aspects of spatial perceptio...
Abstract The presented work concerns visual, aural, and multimodal aspects of spatial perceptio...
Ordinary differential equations are ubiquitous in science and engineering, as they provide mathemati...
Ordinary differential equations are ubiquitous in science and engineering, as they provide mathemati...
This thesis presents SALMA (Simulation and Analysis of Logic-Based Multi- Agent Models), a new appr...
Due to the ability to model even complex dependencies, machine learning (ML) can be used to tackle a...
Due to the ability to model even complex dependencies, machine learning (ML) can be used to tackle a...
The social alignment of the human mind is omnipresent in our everyday life and culture. Yet, what me...
Stochastic modelling of biochemical reaction networks is getting more and more popular. Throughout t...
The social alignment of the human mind is omnipresent in our everyday life and culture. Yet, what me...
This thesis comprises the modelling of and parameter estimation in dynamical systems, with a focus o...
During the past two decades, the focus of biological investigation has begun to shift from reductive...
Several methods for optimization of model parameters, uncertainty quantification and uncertainty red...