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Statistical randomness / Mathematical analysis / Probability theory / Stochastic processes / Markov models / Graph theory / Markov chain / Stochastic differential equations / Distribution / Stochastic simulation / Normal distribution / Decomposition of spectrum
Date: 2016-06-06 06:37:52
Statistical randomness
Mathematical analysis
Probability theory
Stochastic processes
Markov models
Graph theory
Markov chain
Stochastic differential equations
Distribution
Stochastic simulation
Normal distribution
Decomposition of spectrum

Approximation of Probabilistic Reachability for Chemical Reaction Networks using the Linear Noise Approximation∗ Luca Bortolussi3 , Luca Cardelli1,2 , Marta Kwiatkowska2 , and Luca Laurenti2 1

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