Cruz, Christopher John and Mapa, Dennis (2013): An Early Warning System for Inflation in the Philippines Using Markov-Switching and Logistic Regression Models.
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Abstract
With the adoption of the Bangko Sentral ng Pilipinas (BSP) of the Inflation Targeting (IT) framework in 2002, average inflation went down in the past decade from historical average. However, the BSP’s inflation targets were breached several times since 2002. Against this backdrop, this paper develops an early warning system (EWS) model for predicting the occurrence of high inflation in the Philippines. Episodes of high and low inflation were identified using Markov-switching models. Using the outcomes of regime classification, logistic regression models are then estimated with the objective of quantifying the possibility of the occurrence of high inflation episodes. Empirical results show that the proposed EWS model has some potential as a complementary tool in the BSP’s monetary policy formulation based on the in-sample and out-of sample forecasting performance.
Item Type: | MPRA Paper |
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Original Title: | An Early Warning System for Inflation in the Philippines Using Markov-Switching and Logistic Regression Models |
Language: | English |
Keywords: | Inflation Targeting, Markov Switching Models, Early Warning System |
Subjects: | C - Mathematical and Quantitative Methods > C5 - Econometric Modeling C - Mathematical and Quantitative Methods > C5 - Econometric Modeling > C52 - Model Evaluation, Validation, and Selection E - Macroeconomics and Monetary Economics > E3 - Prices, Business Fluctuations, and Cycles > E37 - Forecasting and Simulation: Models and Applications |
Item ID: | 50078 |
Depositing User: | Dennis S. Mapa |
Date Deposited: | 24 Sep 2013 02:32 |
Last Modified: | 26 Sep 2019 08:08 |
References: | Amisano, G., & Fagan, G. (2010). Money Growth & Inflation: A Regime Switching Approach (ECB Working Paper Series No. 1207). Bartus, T. (2005). Estimation of marginal effects using margeff. The Stata Journal, 5(3), 309-329. Bussiere, M., & Fratzscher, M. (2002). Towards a new early warning system of financial crises (European Central Bank Working Paper No. 145). Retrieved from the ECB website: www.ecb.europa.eu/pub/pdf/scpwps/ecbwp145.pdf Cruz, A. (2009). Revised Single-Equation Model for Forecasting Inflation: Preliminary Results. BSP Economic Newsletter, 9(5). Cruz, C., & Dacio, J. (2013). Tenets of Effective Monetary Policy in the Philippines. (forthcoming, BS Review) Debelle, G., & Lim, C. (1998). Preliminary Considerations of an Inflation Targeting Framework for the Philippines (IMF Working Paper WP/98/39). Retrieved from the IMF website: www.imf.org/external/pubs/ft/wp/wp9839.pdf Dempster, A., Laird, N., & Rubin, D. (1977). Maximum Likelihood from Incomplete Data via the EM Algorithm. Journal of the Royal Statistical Society, Series B, 39 (1): 1–38. Doornik, J., & Hendry, D. (2009).Econometric Modelling – PC Give 13: Volume III. New Jersey: Timberlake Consultants Ltd. Edison, H. (2003). Do indicators of financial crises work? An evaluation of an early warning system. International Journal of Finance and Economics, 8(1), 11–53. Elliott, G., Rothenberg, T., & Stock, J. (1996). Efficient Tests for an Autoregressive Unit Root. Econometrica, 64(4), 813-36. Evans, M., & Wachtel, P. (1993). Inflation Regimes and the Sources of Inflation Uncertainty. Journal of Money, Credit and Banking, 25(3), 475-511. Franses, P., & van Dijk, D. (2000). Nonlinear time series models in empirical finance. Cambridge: Cambridge University Press. Hamilton, J. (1990). Analysis of Time Series Subject to Changes in Regime. Journal of Econometrics, 45, 39-70. Kaminsky, G., Lizondo, S., & Reinhart, C. (1998). Leading indicators of currency crisis (IMF Staff Papers 45/1). Kedem, B., & Fokianos, K. (2002). Regression Models for Time Series Analysis. New Jersey: John Wiley & Sons, Inc. Landrito, I., Carlos, C., & Soriano, E. (2011). An Analysis of the Inflation Rate in the Philippines Using the Markov Switching and Logistic Regression Models (Unpublished paper). Lawrence, C., & Tits, A. (2001). A Computationally Efficient Feasible Sequential Quadratic Programming Algorithm. Society of Industrial and Applied Mathematics Journal on Optimization, 11(4), 1092-1118. Mariano, R., Dakila, F., & Claveria, R. (2003). The Bangko Sentral’s structural long-term inflation forecasting model for the Philippines. The Philippine Review of Economics, 15(1), 58-72. McCulloch, R., & Tsay, R. (1993). Bayesian Inference and Prediction for Mean and Variance Shifts in Autoregressive Time Series. Journal of the American Statistical Association, 88, 968–978. McNelis, P., & Bagsic, C. (2007). Output Gap Estimation for Inflation Forecasting: The Case of the Philippines (BSP Working Paper Series No. 2007-01). Retrieved from the BSP website: www.bsp.gov.ph/downloads/Publications/2007/WPS200701.pdf Mitra, S., & Erum. (2012). Early warning prediction system for high inflation: an elitist neuro-genetic network model for the Indian economy. Neural Computing and Applications, March. Nyberg, H. (2010). Studies on Binary Time Series Models with Applications to Empirical Macroeconomics and Finance (Doctoral dissertation). Retrieved from the University of Helsinki website:https://helda.helsinki.fi/bitstream/handle/10138/23519/studieso.pdf? sequence=1 Schwert, G. (1989). Tests for Unit Roots: A Monte Carlo Investigation. Journal of Business & Economic Statistics, 7, 147-159. Simon, J. (1996). A Markov-switching Model of Inflation in Australia (RBA Research Discussion Paper 9611). Retrieved from the Reserve Bank of Australia website: http://www.rba.gov.au/publications/rdp/1996/9611.html Yap,J. (2003). The Output Gap and its Role in Inflation Targeting in the Philippines (PIDS Discussion Paper Series No. 2003-10). Retrieved from the Philippine Institute for Development Studies website: www3.pids.gov.ph/ris/dps/pidsdps0310.pdf |
URI: | https://mpra.ub.uni-muenchen.de/id/eprint/50078 |