AbstractThe stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct formalisms all of whose semantics are expressed as Continuous Time Markov Chains (CTMC). While some kinetic parameters for such models can be measured experimentally, most are estimated by either fitting to experimental data or by performing ad hoc, and often manual search procedures. We consider an alternative strategy to the problem, and introduce algorithms for automatically synthesizing the set of all kinetic parameters such that the model satisfies a given high-level behavioral specification. Our algorithms, which integrate statistical model checking and abstraction refinement, can also report the infeasibility of the model if no ...
Abstract. We consider the problem of synthesising rate parameters for stochastic biochemical network...
Abstract. We consider the problem of synthesising rate parameters for stochastic biochemical network...
This report proposes a novel framework for a rigorous robustness analysis of stochastic biochemical ...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
AbstractThe stochastic dynamics of biochemical reaction networks can be modeled using a number of su...
In this thesis, we study two fundamental problems that arise in the modeling of stochastic systems: ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
Abstract. Model checking has historically been an important tool to verify models of a wide variety ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Model checking has historically been an important tool to verify models of a wide variety of system...
Abstract. We consider the problem of synthesising rate parameters for stochastic biochemical network...
Abstract. We consider the problem of synthesising rate parameters for stochastic biochemical network...
This report proposes a novel framework for a rigorous robustness analysis of stochastic biochemical ...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
AbstractThe stochastic dynamics of biochemical reaction networks can be modeled using a number of su...
In this thesis, we study two fundamental problems that arise in the modeling of stochastic systems: ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
Abstract. Model checking has historically been an important tool to verify models of a wide variety ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Model checking has historically been an important tool to verify models of a wide variety of system...
Abstract. We consider the problem of synthesising rate parameters for stochastic biochemical network...
Abstract. We consider the problem of synthesising rate parameters for stochastic biochemical network...
This report proposes a novel framework for a rigorous robustness analysis of stochastic biochemical ...