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GARCH-MIDAS×DCC-MIDAS (dinamiskā nosacītā korelācija ar jauktām frekvencēm)×Neierobežotā MIDAS regresija×
NozareEkonometrijaEkonometrijaEkonometrija
SaimeRegression modelRegression modelRegression model
Izcelsmes gads201220132007
AutorsEngle and GhyselsEngle, Ghysels, and SohnEric Ghysels
TipsTime-varying variance modelTime-varying correlation modelTime-series regression
PirmavotsEngle, R. F., & Ghysels, E. (2012). GARCH for long memory. Journal of Econometrics, 164(2), 385-391. link ↗Engle, R. F., Ghysels, E., & Sohn, B. (2013). Stock market volatility and macroeconomic fundamentals. Review of Economics and Statistics, 95(3), 776-797. DOI ↗Foroni, C., Ghysels, E., & Marcellino, M. (2015). Mixed-frequency vector autoregressive models. International Journal of Forecasting, 31(4), 1051-1070. DOI ↗
Citi nosaukumiMixed-frequency volatility modelDCC mixed-frequency modelUnrestricted Mixed Data Sampling
Saistītās333
KopsavilkumsGARCH-MIDAS decomposes volatility into short-term (GARCH) and long-term (MIDAS) components, allowing low-frequency macroeconomic variables to drive medium-term volatility while high-frequency returns govern daily fluctuations. Introduced by Engle and Ghysels (2012), this framework elegantly separates volatility time scales. The approach is powerful for understanding how macro conditions (growth, inflation) drive risk premia and for improved volatility forecasting.DCC-MIDAS combines dynamic conditional correlation (DCC) GARCH with mixed-frequency data sampling (MIDAS), enabling estimation of time-varying correlations between variables when observations arrive at different frequencies. Introduced by Engle et al. (2013), it models how correlations evolve with low-frequency macroeconomic conditions using high-frequency asset price information. This is crucial for portfolio risk management and understanding macro-finance linkages.U-MIDAS (Unrestricted MIDAS) is a regression framework designed to handle mixed-frequency data—when explanatory variables arrive at different sampling frequencies (e.g., monthly GDP mixed with daily stock returns). Introduced by Ghysels and colleagues (2007), it eliminates the restrictive lag-structure polynomial constraints of the original MIDAS approach, allowing fuller use of high-frequency information. This flexibility makes it ideal for nowcasting and real-time economic forecasting.
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ScholarGateSalīdzināt metodes: GARCH-MIDAS · DCC-MIDAS · U-MIDAS. Izgūts 2026-06-19 no https://scholargate.app/lv/compare