Publication | Open Access
Path Integral Methods for Stochastic Differential Equations
120
Citations
23
References
2015
Year
Numerical AnalysisProbability Density FunctionEngineeringComputational NeuroscienceStochastic SystemStochastic CalculusStochastic Dynamical SystemSocial SciencesProbability TheoryNeuroscienceStochastic Differential EquationStochastic Differential EquationsPath Integral Methods
Stochastic differential equations (SDEs) have multiple applications in mathematical neuroscience and are notoriously difficult. Here, we give a self-contained pedagogical review of perturbative field theoretic and path integral methods to calculate moments of the probability density function of SDEs. The methods can be extended to high dimensional systems such as networks of coupled neurons and even deterministic systems with quenched disorder.
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