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Finite Sample Performances of the Model Selection Approach in Nonparametric Model Specification for Time Series

机译:时间序列非参数模型规范模型选择方法的有限样本性能

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摘要

Nonparametric model specification for stationary time series involves selections of the smoothing parameter (bandwidth), the lag structure and the functional form (linear vs. nonlinear). In real life problems, none of these factors are known and the choices are interdependent. In this article, we recommend to accomplish these choices in one step via the model selection approach. Two procedures are considered; one based on the information criterion and the other based on the least squares cross validation. The Monte Carlo simulation results show thai both procedures have good finite sample performances and are easy to implement compared to existing two-step probabilistic testing procedures.
机译:静止时间序列的非参数模型规范涉及平滑参数(带宽),滞后结构和功能形式(线性与非线性)的选择。在现实生活中,这些因素都不是已知的并且选择是相互依存的。在本文中,我们建议通过模型选择方法在一步中完成这些选择。考虑了两个程序;一个基于信息标准和另一个基于最小二乘交叉验证。 Monte Carlo仿真结果显示泰式两种程序具有良好的有限样本性能,与现有的两步概率测试程序相比,易于实施。

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