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Equations / Markov models / Stochastic differential equations / Markov chain / Fokker–Planck equation / Differential equation / Langevin equation / Wiener process / Propagator / Statistics / Stochastic processes / Markov processes
Date: 2006-07-07 04:47:57
Equations
Markov models
Stochastic differential equations
Markov chain
Fokker–Planck equation
Differential equation
Langevin equation
Wiener process
Propagator
Statistics
Stochastic processes
Markov processes

On derivations and solutions of master equations and asymptotic representations

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