Reducing local minima in fitness landscapes of parameter estimation by using piecewise evaluation and state estimation
Christoph Zimmer, Frank T. Bergmann, Sven Sahle

TL;DR
This paper introduces a modified objective function for parameter estimation in ODE models that reduces local minima and complexity in the parameter space by treating measurement intervals separately, improving optimization outcomes.
Contribution
It extends the MSS objective function to ODE models, demonstrating its effectiveness in lowering local minima and complexity in biological systems modeling.
Findings
Reduces local minima in parameter estimation
Improves optimization efficiency in biological models
Implemented in COPASI for broad accessibility
Abstract
Ordinary differential equations (ODE) are widely used for modeling in Systems Biology. As most commonly only some of the kinetic parameters are measurable or precisely known, parameter estimation techniques are applied to parametrize the model to experimental data. A main challenge for the parameter estimation is the complexity of the parameter space, especially its high dimensionality and local minima. Parameter estimation techniques consist of an objective function, measuring how well a certain parameter set describes the experimental data, and an optimization algorithm that optimizes this objective function. A lot of effort has been spent on developing highly sophisticated optimization algorithms to cope with the complexity in the parameter space, but surprisingly few articles address the influence of the objective function on the computational complexity in finding global optima.…
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Taxonomy
TopicsGene Regulatory Network Analysis · Evolution and Genetic Dynamics · Microbial Metabolic Engineering and Bioproduction
