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Mathematical analysis / Statistical randomness / Metaphysics / Stochastic processes / Generalized functions / Stochastic simulation / Distribution / Dynamical system / Markov chain
Date: 2016-11-02 05:37:42
Mathematical analysis
Statistical randomness
Metaphysics
Stochastic processes
Generalized functions
Stochastic simulation
Distribution
Dynamical system
Markov chain

Stochastic Analysis of Chemical Reaction Networks Using Linear Noise ApproximationI Luca Cardellia,b,∗, Marta Kwiatkowskaa,∗, Luca Laurentia,∗ a Department of Computer Science, University of Oxford

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