Non-explosivity of stochastically modeled reaction networks that are complex balanced
نویسندگان
چکیده
We consider stochastically modeled reaction networks and prove that if a constant solution to the Kolmogorov forward equation decays fast enough relative to the transition rates, then the model is non-explosive. In particular, complex balanced reaction networks are non-explosive.
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