一个分析多元时间序列非线性的R包

R J. Pub Date : 2022-06-21 DOI:10.32614/rj-2022-018
Andrea Bucci, Giulio Palomba, E. Rossi
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引用次数: 1

摘要

尽管线性自回归模型对不同领域的实践者都很有用,但在时间序列分析中,非线性规范往往更合适。一般来说,非线性建模有许多可选择的方法,其中之一是假设多个区域。在解释多变量框架中的制度变化的可能规范中,平滑转换模型是最通用的,因为它们嵌套线性和阈值自回归模型。本文介绍了在包含预定变量的非常一般的情况下估计和预测向量Logistic平滑过渡模型的starvars包。与现有的R包相比,starvars提供了向量平滑过渡模型的最大似然和非线性最小二乘估计。该软件包还允许在多变量设置中测试非线性,并检测常见中断的存在。此外,该软件包计算多步提前预测。最后,以金融时间序列为例说明其用法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
starvars: An R Package for Analysing Nonlinearities in Multivariate Time Series
Although linear autoregressive models are useful to practitioners in different fields, often a nonlinear specification would be more appropriate in time series analysis. In general, there are many alternative approaches to nonlinearity modelling, one consists in assuming multiple regimes. Among the possible specifications that account for regime changes in the multivariate framework, smooth transition models are the most general, since they nest both linear and threshold autoregressive models. This paper introduces the starvars package which estimates and predicts the Vector Logistic Smooth Transition model in a very general setting which also includes predetermined variables. In comparison to the existing R packages, starvars offers the estimation of the Vector Smooth Transition model both by maximum likelihood and nonlinear least squares. The package allows also to test for nonlinearity in a multivariate setting and detect the presence of common breaks. Furthermore, the package computes multi-step-ahead forecasts. Finally, an illustration with financial time series is provided to show its usage.
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