Bayesian Unit Root Test for AR(1) Model with Trend Approximated

  • Jitendra Kumar Central University of Rajasthan
  • Varun Varun Central University of Rajasthan
  • Dhirendra Kumar Central University of Rajasthan
  • Anoop Chaturvedi University of Allahabad
Keywords: AR model, Linear spline function, Unit root, Posterior odds ratio.

Abstract

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.

Author Biography

Jitendra Kumar, Central University of Rajasthan
Department of Statistics Central University of Rajasthan Bandersindri, District: Ajmer, Rajasthan, India-305817

References

D. A. Dickey, andW. A. Fuller, Distribution of the estimators for autoregressive time series with a unit root, Journal of the American Statistical Association, vol. 74, no. 366a, pp. 427–431, 1979.

S. Ouliaris, J. Y. Park, and P. C. Phillips, Testing for a unit root in the presence of a maintained trend, In Advances in Econometrics and Modelling, pp.7–28, Springer, Dordrecht, 1989.

C. A. Sims, Bayesian skepticism on unit root econometrics, Journal of Economic Dynamics and Control, vol. 12, no. 2-3, pp. 463–474, 1988.

C. A. Sims, and H. Uhlig, Understanding unit rooters: A helicopter tour, Econometrica: Journal of the Econometric Society, vol. 59, no. 6, pp. 1591–1599, 1991.

P. C. Schotman, and H. K. Van Dijk, On Bayesian routes to unit roots, Journal of Applied Econometrics, vol. 6, no. 4, pp. 387–401, 1991.

E. Zivot, and P. C. Phillips, A Bayesian analysis of trend determination in economic time series, Econometric Reviews, vol. 13, no. 3, pp. 291–336, 1994.

A. Chaturvedi, and J. Kumar, Bayesian unit root test for model with maintained trend, Statistics & Probability Letters, vol. 74, no. 2, pp. 109–115, 2005.

P. Perron, The great crash, The oil price shock, and unit root hypothesis, Econometrica: Journal of the Econometric Society, vol. 57, no. 6, pp. 1361–1401, 1989.

P. C. Phillips, and P. Perron, Testing for a unit root in time series regression, Biometrika, vol. 75, no. 2, pp. 335–346, 1988.

R. L. Eubank, Nonparametric regression and spline smoothing, CRC press, 1999.

R. C. Tiwari, K. A. Cronin, W. Davis, E. J. Feuer, B. Yu, and S. Chib, Bayesian model selection for join point regression with application to age–adjusted cancer rates, Journal of the Royal Statistical Society: Series C (Applied Statistics), vol. 54, no. 5, pp. 919–939, 2005.

M. Kyung, A computational Bayesian method for estimating the number of knots in regression splines, Bayesian Analysis, vol. 6, no. 4, pp. 793–828, 2011.

M. S. Erdogan, and O. O. Ege, The use of spline, Bayesian spline and penalized Bayesian spline regression for modeling, Journal of Scientific Research & Reports, vol. 4, no. 2, pp. 153–161, 2015.

G. Ferreira, L. M. Castro, V. H. Lachos, and R. Dias, Bayesian modeling of autoregressive partial linear models with scale mixture of normal errors, Journal of Applied Statistics, vol. 40, no. 8, pp. 1796–1816, 2013.

D. Hurley, J. Hussey, R. McKeown, and C. Addy, An evaluation of splines in linear regression, SAS Conference Proceedings: SAS Users Group International 31(SUGI 31 Proceedings), Paper 147, 2006.

A. Araveeporn, Estimating conditional heteroscedastic nonlinear autoregressive model by using smoothing spline and penalized spline methods, Songklanakarin Journal of Science & Technology, vol. 41, no. 4, pp. 813–821, 2019.

E.W. Okereke, C. O. Omekara, and C. K. Ekezie, Buys-Ballot estimators of the parameters of the cubic polynomial trend model and their statistical properties, Statistics Optimization and Information Computing, vol. 6, no. 2, pp. 248–265, 2018.

M.K. Iqbal1, M. Abbas, and N. Khalid1, New cubic B-spline approximation for solving non-linear singular boundary value problems arising in physiology, Communications in Mathematics and Applications, vol. 9, no. 3, pp. 377–392, 2018.

L. Kong, X. Gong, C. Yuan, H. Xiao, and J. Liu , Nonlinear time series prediction model based on particle swarm optimization B-spline network, FAC-PapersOnLine, vol. 51, no. 21, pp. 3219–3223, 2018.

Published
2020-05-27
How to Cite
Kumar, J., Varun, V., Kumar, D., & Chaturvedi, A. (2020). Bayesian Unit Root Test for AR(1) Model with Trend Approximated. Statistics, Optimization & Information Computing, 8(2), 425-461. https://doi.org/10.19139/soic-2310-5070-786
Section
Research Articles