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Boosting nonlinear additive autoregressive time series

机译:增强非线性加性自回归时间序列

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摘要

Several methods for the analysis of nonlinear time series models have been proposed. As in linear autoregressive models the main problems are model identification, estimation and prediction. A boosting method is proposed that performs model identification and estimation simultaneously within the framework of nonlinear autoregressive time series. The method allows one to select influential terms from a large number of potential lags and exogenous variables. The influence of the selected terms is modeled by an expansion in basis function allowing for a flexible additive form of the predictor. The approach is very competitive in particular in high dimensional settings where alternative fitting methods fail. This is demonstrated by means of simulations and two applications to real world data.
机译:提出了几种分析非线性时间序列模型的方法。与线性自回归模型一样,主要问题是模型识别,估计和预测。提出了一种在非线性自回归时间序列框架内同时进行模型识别和估计的增强方法。该方法允许人们从大量潜在的滞后和外生变量中选择有影响力的术语。所选项的影响通过基础函数的扩展进行建模,从而可以实现预测变量的灵活加法形式。特别是在替代安装方法失败的高尺寸环境中,该方法非常有竞争力。这通过模拟以及对现实世界数据的两种应用来证明。

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