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Nonlinear models for strongly dependent processes with financial applications

机译:具有财务应用程序的高度依赖过程的非线性模型

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This paper is motivated by recent evidence that many univariate economic and financial time series have both nonlinear and long memory characteristics. Hence, this paper considers a general nonlinear, smooth transition regime autoregression which is embedded within a strongly dependent, long memory process. A time domain MLE with simultaneous estimation of the long memory, linear AR and nonlinear parameters is shown to have desirable asymptotic properties. The Bayesian and Hannan-Quinn information criteria are shown to provide consistent model selection procedures. The paper also considers an alternative two step estimator where the original time series is fractionally filtered from an initial semi-parametric estimate of the long memory parameter. Simulation evidence indicates that the time domain MLE is generally superior to the two step estimator. The paper also includes some applications of the methodology and estimation of a fractionally integrated, nonlinear autoregressive-ESTAR model to forward premium and real exchange rates.
机译:本文受到最新证据的启发,该证据表明许多单变量经济和金融时间序列具有非线性和长记忆特性。因此,本文考虑了一种一般的非线性平稳过渡态自回归,该自回归嵌入在一个高度依赖的长存储过程中。同时估计长记忆,线性AR和非线性参数的时域MLE具有理想的渐近性质。显示贝叶斯和Hannan-Quinn信息标准可提供一致的模型选择过程。本文还考虑了另一种两步估算器,其中从长记忆参数的初始半参数估算中对原始时间序列进行了部分滤波。仿真证据表明,时域MLE通常优于两步估计器。本文还包括该方法的一些应用和分数积分的非线性自回归ESTAR模型的估计,以转发溢价和实际汇率。

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