Publication | Open Access
Convergence rate and stability of the truncated Euler–Maruyama method for stochastic differential equations
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Citations
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References
2018
Year
Numerical AnalysisTruncated Em MethodEngineeringStochastic AnalysisStochastic Differential EquationsNumerical ComputationStochastic ProcessesNumerical StabilityTruncated Euler–maruyamaApproximation TheoryConvergence AnalysisStochastic SystemStochastic Dynamical SystemConvergence RateStochastic Differential EquationNumerical Method For Partial Differential EquationStochastic ModelingTruncated Euler–maruyama MethodStochastic CalculusNumerical TreatmentNumerical Methods
Recently, Mao (2015) developed a new explicit method, called the truncated Euler–Maruyama (EM) method, for the nonlinear SDE and established the strong convergence theory under the local Lipschitz condition plus the Khasminskii-type condition. In his another follow-up paper (Mao, 2016), he discussed the rates of Lq-convergence of the truncated EM method for q≥2 and showed that the order of Lq-convergence can be arbitrarily close to q∕2 under some additional conditions. However, there are some restrictions on the truncation functions and these restrictions sometimes might force the step size to be so small that the truncated EM method would be inapplicable. The key aim of this paper is to establish the convergence rate without these restrictions. The other aim is to study the stability of the truncated EM method. The advantages of our new results will be highlighted by the comparisons with the results in Mao (2015, 2016) as well as others on the tamed EM and implicit methods.
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