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A numerical approach for estimating higher order spectra using neural network autoregressive model

机译:使用神经网络自回归模型估算高阶谱的数值方法

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A method for parametric estimation of higher order spectra of time series using a nonlinear autoregressive model based on multi-layered neural networks (NNAR model) is presented. In real world problems there exist signals that can not be described sufficiently by linear time series models such as AR or ARMA models. In order to characterize such signals, several nonlinear time series models have been investigated in recent years. However, in contrast with the case of linear models, there are a few parametric approaches that estimate the higher order statistical characteristics of observed time series using such nonlinear time series models. It is very difficult to derive analytically explicit formulations of higher order spectra from the expressions of such nonlinear time series models. In this study, employing numerical techniques, the authors construct a parametric estimator of higher order spectra. It consists of the following steps: 1. training an NNAR model on the given time series, 2. iteration of numerical integrals for solving the joint probability density function, 3. calculation of higher order cumulant functions by renewal equations based on the joint probability density function solved in 2., and 4. multidimensional discrete Fourier transforms of higher order cumulant functions calculated in 3. The authors also show that any NNAR model with finite valued weights satisfies a sufficient condition of convergence.
机译:呈现了一种基于多层神经网络(NNAR模型)的非线性自回归模型的时间序列高阶谱的参数估计的方法。在现实世界中,存在不能通过诸如AR或ARMA模型的线性时间序列模型足够地描述的信号。为了表征这些信号,近年来已经研究了几种非线性时间序列模型。然而,与线性模型的情况相比,有一些参数方法估计使用这种非线性时间序列模型的观察时间序列的高阶统计特性。从这种非线性时间序列模型的表达中得出了高阶光谱的分析显式配方非常困难。在本研究中,采用数值技术,作者构建了高阶光谱的参数估计。它包括以下步骤:1。在给定的时间序列中训练一个NNAR模型,2.用于求解联合概率密度函数的数值积分的迭代,3.基于联合概率密度,通过更新方程计算更高阶累积函数的累积功能在2中解决的功能解决了。作者还表明,作者还表明,任何具有有限值的NNAR模型都满足了足够的收敛条件。

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