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Gradient based Identification Algorithm for Separable Nonlinear Models

机译:基于梯度的可分离非线性模型的识别算法

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Separable nonlinear models are a class of models that can separately represent the linear and nonlinear parameters, which have a wide range of applications in many fields. This paper attempts to explore the performance of gradient based algorithms in identifying separable nonlinear models. We choose the RBF-AR model as the research objection, which is a classical separable nonlinear model and has a wide range of applications in time series modelling. Three different gradient based optimization strategies are used to estimate the parameters of the RBF-AR model, including the classical gradient descent (GD) method, the alternative gradient descent (GD-L) method, and the gradient based variable projection(GD-VP) method. The experimental results show that the gradient descent method is sensitive to the learning rate and is prone to gradient explosion problems, so the convergence speed is slow; while the VP algorithm can alleviate the impact of the learning rate, and improve the efficiency and stability of the gradient descent alaorithm.
机译:可分离的非线性模型是一类可以单独代表线性和非线性参数的一类模型,这些参数在许多领域中具有广泛的应用。本文试图探讨梯度基于梯度算法在识别可分离非线性模型中的性能。我们选择RBF-AR模型作为研究异点,这是一种经典可分离的非线性模型,并在时间序列建模中具有广泛的应用。三种不同的基于梯度的优化策略用于估计RBF-AR模型的参数,包括经典梯度下降(GD)方法,替代梯度下降(GD-L)方法,以及基于梯度的可变投影(GD-VP ) 方法。实验结果表明,梯度下降方法对学习率敏感,易于梯度爆炸问题,因此收敛速度慢;虽然VP算法可以缓解学习率的影响,并提高梯度下降Alaorithm的效率和稳定性。

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