This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes in parameter values, constrained by the combination of prior beliefs and data. This approach identifies stiff parameter combinations strongly affecting the quality of the model-data fit while simultaneously revealing which of these key parameter combinations are informed primarily by the data or are also substantively influenced by the priors. We focus on the very common context in complex systems where the amount and quality of data are low compared to the number of model parameters to be collectively estimated, and showcase the benefits of this technique for applications in biochemistry, ecology, and cardiac electrophysiology. We also show ...
Scientists use mathematical modelling to understand and predict the properties of complex physical s...
Computational models of human processes are used for many different purposes and in many different t...
In particular in the last decade, optimization under uncertainty has engaged attention in the mathem...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
Quantitative computational models play an increasingly important role in modern biology. Such models...
Abstract When modeling complex biological systems, exploring parameter space is critical, because pa...
Computational and mathematical modelling has become a valuable tool for investigating biological sys...
25 páginas, 11 figuras, 2 tablasDynamic models of biochemical networks are often formulated as sets ...
Scientists use mathematical modelling as a tool for understanding and predicting the properties of c...
This thesis is concerned with drawing out high-level insight from otherwise complex mathematical mod...
ABSTRACT: Successful predictions are among the most compelling vali-dations of any model. Extracting...
<div><p>We explore the relationship among experimental design, parameter estimation, and systematic ...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
It can be difficult to identify ways to reduce the complexity of large models whilst maintaining pre...
Scientists use mathematical modelling to understand and predict the properties of complex physical s...
Computational models of human processes are used for many different purposes and in many different t...
In particular in the last decade, optimization under uncertainty has engaged attention in the mathem...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
Quantitative computational models play an increasingly important role in modern biology. Such models...
Abstract When modeling complex biological systems, exploring parameter space is critical, because pa...
Computational and mathematical modelling has become a valuable tool for investigating biological sys...
25 páginas, 11 figuras, 2 tablasDynamic models of biochemical networks are often formulated as sets ...
Scientists use mathematical modelling as a tool for understanding and predicting the properties of c...
This thesis is concerned with drawing out high-level insight from otherwise complex mathematical mod...
ABSTRACT: Successful predictions are among the most compelling vali-dations of any model. Extracting...
<div><p>We explore the relationship among experimental design, parameter estimation, and systematic ...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
It can be difficult to identify ways to reduce the complexity of large models whilst maintaining pre...
Scientists use mathematical modelling to understand and predict the properties of complex physical s...
Computational models of human processes are used for many different purposes and in many different t...
In particular in the last decade, optimization under uncertainty has engaged attention in the mathem...