Show simple item record

dc.contributor.authorAryani, Sri
dc.contributor.authorKuswanto, Heri
dc.contributor.authorSuhartono
dc.date.accessioned2015-12-05T07:37:40Z
dc.date.available2015-12-05T07:37:40Z
dc.date.issued2015-12-07
dc.identifier.citation[1] Badan Pusat Statistik. Metode Pengukuran Inflasi Indonesia. Badan Pusat Statistik, 2008. [2] A. Cologni, and M. Manera. Oil Prices, Inflation and Interest Rates in a Structural Cointregated VAR Model for G7 Countries. Journal of Empirical Finance, 30:83-106, 1993. [3] M. A. Nizar. Dampak Fluktuasi Harga Minyak Dunia terhadap Perekonomian Indonesia, Buletin Ilmiah Litbang Perdagangan, page 189-209, 2012. [4] S. Saleem, and K. Ahmad. Crude Oil Price and Inflation in Pakistan. Bulletin of Business and Economics, page 10-18, 2015. [5] R. F. Engle. Autoregressive Conditional Heteroscedasticity with Estimates of the Variance of United Kingdom Inflation. Journal of Empirical Finance, 50:987-1008, 1982. [6] Bollerslev, Tim. Generalized Autoregressive Conditional Heteroscedasticity. Journal of Econometrics, 31:307-327, 1986. [7] Z. Ding, C.W.J. Granger, and R.F. Engle. A Long Memory Property of Stock Market Returns and A New Model. Journal of Empirical Finance, 1:83-106, 1993. [8] S.K.A. Rizvi, et al. Inflation Volatility: An Asia Perspective, Economic Research. Economic Research, 27:280-303, 2012. [9] Glosten, et al. On the Relation between the Expected Value and the Volatility of the Nominal Excess Return on Stocks. The Journal of Finance, 68:1779-1801, 1993. [10] L. Hentschel. All in the Family Nesting Symmetric and Asymmetric GARCH Model. Journal of Financial Economic, 39:71-104, 1995. [11] G. Forte, and M. Manera. Forecasting Volatility in Asian and European Stocks Markets with Asymmetric GARCH Models. Newfin Working Paper at Bocconi University, Italy. [12] Labushagne, et al. A Comparison of Risk Neutral Historic Distribution E-GARCH and GJR- GARCH Model Generated Volatility Skews for BRICS Securities Exchange Indexes Analysis. Procedia Economic and Finance, page 344-352, 2015. [13] Markidakis, et al. Forecasting: Methods and Applications, 3rd edition. John Wiley and Sons, 1998. [14] W.W.S. Wei. Time Series Analysis: Univariate and Multivariate Methods. Addison-Wesley Publishing Co, 2006. [15] A.D. Brunner, and G.D. Hess. Are Higher Levels of Inflation Less Predictable? A State Dependent Conditional Heteroscedasticity Approach. Journal of Business & Economic Statistics, 11:187-197, 2012. [16] Suhartono and M.H. Lee. A Hybrid Approach based on Winter’s Model and Weighted Fuzzy Time Series for Forecasting Trend and Seasonal Data. Journal of Mathematics and Statistics, 7 (3), 177-183, 2011. [17] Bollerslev, Tim. Glosary to ARCH (GARCH). CREATES Research Paper, 49, 2008.in_ID
dc.identifier.issn2477-3328
dc.identifier.urihttp://hdl.handle.net/11617/6312
dc.description.abstractForecasting inflation is necessary as a basis for making decisions and high quality good planning in economic development in Indonesia particularly for the government and businessmen. The forecasting generally uses time series data. However, there is a time series data which is difficult to obtain stationary, i.e., the variance on financial time series data such as the stock price index, interest rates, inflation, exchange rates, and etc. It is mainly caused by the inconsistency of variance (heteroscedasticity). This study developed Autoregressive Integrated Moving Average (ARIMA) model using exogenous factors, namely the price of oil and outlier detection to forecast inflation. Another modeling which is expected to solve the problem of heteroscedasticity is a Generalized Autoregressive Conditional Heteroscedasticity (GARCH) model. In this study, the asymmetric GARCH of Glosten Jagannathan Runkle-GARCH (GJR-GARCH) was carried out. This model could accommodate the volatility in the form of negative shocks that can leverage the effect. The data used in this study was the Inflation rate of Indonesia and world oil prices in January 1991 to December 2014 respectively. The results showed that ARIMAX-GJR GARCH is the best model to forecast national inflation volatility.in_ID
dc.language.isoenin_ID
dc.publisherUniversitas Muhammadiyah Surakartain_ID
dc.subjectinflation ratein_ID
dc.subjectARIMAXin_ID
dc.subjectGARCHin_ID
dc.subjectGJR-GARCHin_ID
dc.titleModeling Inflation Volatility Using Arimax-Garchin_ID
dc.typeArticlein_ID


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record