Publication | Closed Access
Robust Standard Gradient Descent Algorithm for ARX Models Using Aitken Acceleration Technique
27
Citations
29
References
2021
Year
Numerical AnalysisEngineeringMachine LearningRobust ModelingAerospace EngineeringContinuous OptimizationComputer EngineeringLarge Scale OptimizationConvergence RateInverse ProblemsArx ModelsNonlinear OptimizationRobust OptimizationAitken Acceleration MethodAdaptive Optimization
A robust standard gradient descent (SGD) algorithm for ARX models using the Aitken acceleration method is developed. Considering that the SGD algorithm has slow convergence rates and is sensitive to the step size, a robust and accelerative SGD (RA-SGD) algorithm is derived. This algorithm is based on the Aitken acceleration method, and its convergence rate is improved from linear convergence to at least quadratic convergence in general. Furthermore, the RA-SGD algorithm is always convergent with no limitation of the step size. Both the convergence analysis and the simulation examples demonstrate that the presented algorithm is effective.
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