The use of mathematical models in the sciences often involves the estimation of unknown parameter values from data. Sloppiness provides information about the uncertainty of this task. In this paper, we develop a precise mathematical foundation for sloppiness as initially introduced and define rigorously key concepts, such as `model manifold', in relation to concepts of structural identifiability. We redefine sloppiness conceptually as a comparison between the premetric on parameter space induced by measurement noise and a reference metric. This opens up the possibility of alternative quantification of sloppiness, beyond the standard use of the Fisher Information Matrix, which assumes that parameter space is equipped with the usual Euclide...
When non-linear models are fitted to experimental data, parameter estimates can be poorly constraine...
<p>(Left) The set of all possible model outputs defines a manifold of predictions. The true model id...
The structure of semiparametric statistical models is elucidated by information geometry. The paper ...
The use of mathematical models in the sciences often involves the estimation of unknown parameter va...
The use of mathematical models in the sciences often involves the estimation of unknown parameter va...
The use of mathematical models in the sciences often involves the estimation of unknown parameter va...
Abstract When modeling complex biological systems, exploring parameter space is critical, because pa...
Scientists use mathematical modelling as a tool for understanding and predicting the properties of c...
25 páginas, 11 figuras, 2 tablasDynamic models of biochemical networks are often formulated as sets ...
Scientists use mathematical modelling to understand and predict the properties of complex physical s...
Complex models in physics, biology, economics, and engineering are often sloppy, meaning that the mo...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
In order to understand a variety of physical phenomena (such as signaling networks in molecular bio...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
<p>Although sloppiness and parameter identifiability are closely related, they are actually two dist...
When non-linear models are fitted to experimental data, parameter estimates can be poorly constraine...
<p>(Left) The set of all possible model outputs defines a manifold of predictions. The true model id...
The structure of semiparametric statistical models is elucidated by information geometry. The paper ...
The use of mathematical models in the sciences often involves the estimation of unknown parameter va...
The use of mathematical models in the sciences often involves the estimation of unknown parameter va...
The use of mathematical models in the sciences often involves the estimation of unknown parameter va...
Abstract When modeling complex biological systems, exploring parameter space is critical, because pa...
Scientists use mathematical modelling as a tool for understanding and predicting the properties of c...
25 páginas, 11 figuras, 2 tablasDynamic models of biochemical networks are often formulated as sets ...
Scientists use mathematical modelling to understand and predict the properties of complex physical s...
Complex models in physics, biology, economics, and engineering are often sloppy, meaning that the mo...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
In order to understand a variety of physical phenomena (such as signaling networks in molecular bio...
This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes ...
<p>Although sloppiness and parameter identifiability are closely related, they are actually two dist...
When non-linear models are fitted to experimental data, parameter estimates can be poorly constraine...
<p>(Left) The set of all possible model outputs defines a manifold of predictions. The true model id...
The structure of semiparametric statistical models is elucidated by information geometry. The paper ...