We obtain special type of differential equations which their solution are random variable with known continuous density function. Stochastic differential equations (SDE) of continuous distributions are determined by the Fokker-Planck theorem. We approximate solution of differential equation with numerical methods such as: the Euler-Maruyama and ten stages explicit Runge-Kutta method, and analysis error prediction statistically. Numerical results, show the performance of the Rung-Kutta method with respect to the Euler-Maruyama. The exponential two parameters, exponential, normal, uniform, beta, gamma and Parreto distributions are considered in this paper. © 2011 The Korean Mathematical Society.
CITATION STYLE
Amini, M., Soheili, A. R., & Allahdadi, M. (2011). Numerical solution of stochastic differential equation corresponding to continuous distributions. Communications of the Korean Mathematical Society, 26(4), 709–720. https://doi.org/10.4134/CKMS.2011.26.4.709
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