趋势逼近AR(1)模型的贝叶斯单位根检验

Jitendra Kumar, V. Varun, Dhirendra Kumar, A. Chaturvedi
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引用次数: 1

摘要

本研究的目的是开发一个使用样条函数处理非线性趋势过程的时间序列模型。样条函数是一个关于时间分量的分段多项式段。样条函数的主要优点是逼近,非线性的时间趋势,但线性的时间趋势之间的连续连接点。由于所提出的模型中存在单位根,因此提出了单位根假设来检验非平稳性。在具有线性趋势的自回归模型中,时间趋势在单位根情况下消失。然而,当存在非线性趋势并由线性样条函数近似时,在单位根的情况下,趋势分量不存在,但截距项以r节进行偏移。对于贝叶斯视角下的决策,后验优势比用于假设检验问题。在适当的先验信息下,我们导出了假设假设的后验概率。通过模拟研究和实证应用来检验理论结果的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Unit Root Test for AR(1) Model with Trend Approximated
The objective of present study is to develop a time series model for handling the non-linear trend process using a spline function. Spline function is a piecewise polynomial segment concerning the time component. The main advantage of spline function is the approximation, non linear time trend, but linear time trend between the consecutive join points. A unit root hypothesis is projected to test the non stationarity due to presence of unit root in the proposed model. In the autoregressive model with linear trend, the time trend vanishes under the unit root case. However, when non-linear trend is present and approximated by the linear spline function, through the trend component is absent under the unit root case, but the intercept term makes a shift with r knots. For decision making under the Bayesian perspective, the posterior odds ratio is used for hypothesis testing problems. We have derived the posterior probability for the assumed hypotheses under appropriate prior information. A simulation study and an empirical application are presented to examine the performance of theoretical outcomes.
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