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:: Volume 25, Issue 1 (1-2021) ::
Andishe 2021, 25(1): 43-51 Back to browse issues page
Long-term Inflation Analysis Using Varying Coefficients Model
Reza Cheraghi , Reza Hashemi *
Razi University
Abstract:   (1958 Views)

Varying coefficient models are among the most important tools for discovering the dynamic patterns when a fixed pattern does not fit adequately well on the data, due to existing diverse temporal or local patterns. These models are natural extensions of classical parametric models that have achieved great popularity in data analysis with good interpretability. The high flexibility and interpretability of these models have led to use in many real applications. In this paper, after presenting a brief review of varying coefficient models, we use the parameter estimation method using the kernel function and cubic
spline then confidence band and hypothesis testing are investigated. Finally, using the real data of Iran’s inflation rate from 1989 to 2017, we show the application and capabilities of the varying coefficient model in interpreting the results. The main challenge in this application is that the panel or longitudinal models or even time series models with heterogeneous variances such as ARCH and GARCH models and their derived models did not fit adequately well on this dataset which justifies the use of varying coefficient models.

Keywords: Varying coefficients model, Kernel function, Cubic Splines, Iran's Inflation rate.
Full-Text [PDF 509 kb]   (843 Downloads)    
Type of Study: Applicable | Subject: Special
Received: 2020/03/16 | Accepted: 2021/01/20 | Published: 2021/01/29
References
1. Brumback, B. and Rice, J. (1998). Smoothing spline models for the analysis of nested and crossed samples of curves, J. Amer.Statist. Assoc., 93, 961–976.
2. Cai, Z., Fan, J. and Li, R. (2000). Efficient estimation and inferences for varying-coefficient models. J. Amer. Statist. Assoc., 95, 888-902.
3. Chiang, C. T., Rice, J. A., and Wu, C. O. (2001). Smoothing spline estimation for varying coefficient models with repeatedly measured dependent variables.IEEE Trans.Journal of the American Statistical Association; 96(454) , 605-619.
4. Cleveland, W. S., and Grosse, E. (1991). Computational methods for local regression. Statistics and computing, 1(1), 47-62.
5. Fan, J., and Gijbels, I. (1995). Data-driven bandwidth selection in local polynomial fitting: variable bandwidth and spatial adaptation, Journal of the Royal Statistical Society: Series B (Methodological).IEEE Trans. The annals of Statistics; 57(2) , 371-394.
6. Fan, J., and Zhang, W., (1999). Statistical estimation in varying coefficient models.IEEE Trans. Statistical estimation in varying coefficient models;The annals of Statistics, 27(5), 1491-1518.
7. Fan, J., and Zhang, W. (2000). Simultaneous confidence bands and hypothesis testing in varying‐coefficient models. IEEE Trans. Scandinavian Journal of Statistics, 27(4), 715-731.
8. Fan, J., Zhang, C.M., and Zhang, J. (2001). Generalized likelihood ratio statistics and Wilks phenomenon. The Annals of Statistics,29,153–193.
9. Hastie, T., and Tibshirani, R. (1993). Varying-coefficient models.IEEE Trans. Journal of the Royal Statistical Society: Series B (Methodological), 55(4), 757-779.
10. Hoover, D. R., Rice, J. A., Wu, C. O., and Yang, L. P. (1998). Nonparametric smoothing estimates of time-varying coefficient models with longitudinal data. IEEE Trans. Biometrika; 85(4) , 809-822.
11. Huang, J.Z., and Shen, H., (2004). Functional coefficient regression models for nonlinear time series: A polynomial spline approach. Scandinavian Journal of Statistics, 31, 515–534.
12. Huang, J.Z., Wu, C. O. and Zhou, L. (2002). Varying-coefficient models and basis function approximations for the analysis of repeated measurements. Biometrika, 89, 111-128.
13. Wang. Y, (2007). Varying-Coefficient Models: New Models, Inference Procedures, and Applications, PhD Dissertation.
14. Wu, C. O., Chiang, C. T., and Hoover, D. R. (1998). Asymptotic confidence regions for kernel smoothing of a varying coefficient model with longitudinal data. IEEE Trans.Journal of the American Statistical Association, 93(444), 1388-1402.
15. Zhang, W., and Lee, S. Y. (2000). Variable bandwidth selection in varying-coefficient models.IEEE Trans Journal of Multivariate Analysis, 74(1), 116-134.
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Cheraghi R, Hashemi R. Long-term Inflation Analysis Using Varying Coefficients Model. Andishe 2021; 25 (1) :43-51
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Volume 25, Issue 1 (1-2021) Back to browse issues page
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