In this work we present an efficient method to tackle the problem of parameter inference for stochastic biological models. We develop a variant of the Particle Swarm Optimization algorithm by including Probabilistic Dependency statistical models to detect the parameter dependencies. This results in a more efficient parameter inference of the biological model.We test the Probabilistic Dependency- PSO on a well-known benchmark problem: the thermal isomerization of α-pinene © 2012 Springer-Verlag GmbH
One of the most complex problems in Systems Biology is Parameter estimation (PE), which consists in ...
We present a parameter estimation method, based on particle swarm optimization (PSO) and embedding t...
Computational methods adopted in the field of Systems Biology require the complete knowledge of reac...
In this work we present an efficient method to tackle the problem of parameter inference for stochas...
The modelling of biochemical systems requires the knowledge of several quantitative parameters (e.g....
The parameter estimation (PE) of biochemical reactions is one of the most challenging tasks in syste...
\u3cp\u3eParameter estimation (PE) of biological systems is one of the most challenging problems in ...
In the field of Systems Biology, simulating the dynamics of biochemical models represents one of the...
\u3cp\u3eTo understand the emergent behavior of biochemical systems, computational analyses generall...
For many stochastic models of interest in systems biology, such as those describing biochemical reac...
\u3cp\u3eIn the field of Systems Biology, simulating the dynamics of biochemical models represents o...
Computational systems biology is concerned with the development of detailed mechanistic models of bi...
5siOne of the most complex problems in Systems Biology is Parameter estimation (PE), which consists ...
One of the most complex problems in Systems Biology is Parameter estimation (PE), which consists in ...
Parameterized probabilistic complex computational (P2C2) models are being increasingly used in compu...
One of the most complex problems in Systems Biology is Parameter estimation (PE), which consists in ...
We present a parameter estimation method, based on particle swarm optimization (PSO) and embedding t...
Computational methods adopted in the field of Systems Biology require the complete knowledge of reac...
In this work we present an efficient method to tackle the problem of parameter inference for stochas...
The modelling of biochemical systems requires the knowledge of several quantitative parameters (e.g....
The parameter estimation (PE) of biochemical reactions is one of the most challenging tasks in syste...
\u3cp\u3eParameter estimation (PE) of biological systems is one of the most challenging problems in ...
In the field of Systems Biology, simulating the dynamics of biochemical models represents one of the...
\u3cp\u3eTo understand the emergent behavior of biochemical systems, computational analyses generall...
For many stochastic models of interest in systems biology, such as those describing biochemical reac...
\u3cp\u3eIn the field of Systems Biology, simulating the dynamics of biochemical models represents o...
Computational systems biology is concerned with the development of detailed mechanistic models of bi...
5siOne of the most complex problems in Systems Biology is Parameter estimation (PE), which consists ...
One of the most complex problems in Systems Biology is Parameter estimation (PE), which consists in ...
Parameterized probabilistic complex computational (P2C2) models are being increasingly used in compu...
One of the most complex problems in Systems Biology is Parameter estimation (PE), which consists in ...
We present a parameter estimation method, based on particle swarm optimization (PSO) and embedding t...
Computational methods adopted in the field of Systems Biology require the complete knowledge of reac...