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Boosting Techniques for Nonlinear Time Series Models

机译:非线性时间序列模型的推进技术

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摘要

Many of the popular nonlinear time series models require a priori the choice of parametric functions which are assumed to be appropriate in specific applications. This approach is used mainly in financial applications, when sufficient knowledge is available about the nonlinear structure between the covariates and the response. One principal strategy to investigate a broader class on nonlinear time series is the Nonlinear Additive AutoRegressive (NAAR) model. The NAAR model estimates the lags of a time series as flexible functions in order to detect non-monotone relationships between current observations and past values. We consider linear and additive models for identifying nonlinear relationships. A componentwise boosting algorithm is applied to simultaneous model fitting, variable selection, and model choice. Thus, with the application of boosting for fitting potentially nonlinear models we address the major issues in time series modelling: lag selection and nonlinearity. By means of simulation we compare the outcomes of boosting to the outcomes obtained through alternative nonparametric methods. Boosting shows an overall strong performance in terms of precise estimations of highly nonlinear lag functions. The forecasting potential of boosting is examined on real data where the target variable is the German industrial production (IP). In order to improve the model's forecastingquality we include additional exogenous variables. Thus we address the second major aspect in this paper which concerns the issue of high-dimensionality in models. Allowing additional inputs in the model extends the NAAR model to an even broader class of models, namely the NAARX model. We show that boosting can cope with large models which have many covariates compared to the number of observations.
机译:许多流行的非线性时间序列模型都要求先验地选择参数函数,这些参数被认为适合于特定应用。当有足够的知识可用于协变量和响应之间的非线性结构时,此方法主要用于金融应用程序。研究非线性时间序列上更广泛类别的一种主要策略是非线性加性自回归(NAAR)模型。 NAAR模型将时间序列的滞后估计为灵活函数,以便检测当前观测值和过去值之间的非单调关系。我们考虑用于识别非线性关系的线性和加性模型。逐分量提升算法应用于同时模型拟合,变量选择和模型选择。因此,通过使用Boosting来拟合潜在的非线性模型,我们解决了时间序列建模中的主要问题:滞后选择和非线性。通过模拟,我们将提升的结果与通过其他非参数方法获得的结果进行了比较。就高度非线性滞后函数的精确估计而言,升压显示出总体强大的性能。在目标变量为德国工业生产(IP)的实际数据上检查了提振的预测潜力。为了提高模型的预测质量,我们包括了其他外生变量。因此,我们解决了本文的第二个主要方面,该方面涉及模型中的高维问题。在模型中允许附加输入将NAAR模型扩展到甚至更广泛的模型类别,即NAARX模型。我们表明,与观察数量相比,增强可以处理具有很多协变量的大型模型。

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