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बेयसियन डायनामिक कंडीशनल कोरिलेशन गार्ग (बेयसियन डीसीसी-गार्ग)×वेक्टर ऑटोरिग्रेशन (VAR)×
क्षेत्रअर्थमितिअर्थमिति
परिवारRegression modelRegression model
उद्भव वर्ष2002 (DCC); 2000s (Bayesian extension)1980
प्रवर्तकEngle (2002) for DCC; Bayesian extension via MCMC literature (2000s onwards)Christopher A. Sims
प्रकारMultivariate volatility modelMultivariate time-series model
मौलिक स्रोतEngle, R. F. (2002). Dynamic conditional correlation: A simple class of multivariate generalized autoregressive conditional heteroskedasticity models. Journal of Business and Economic Statistics, 20(3), 339-350. DOI ↗Sims, C. A. (1980). Macroeconomics and Reality. Econometrica, 48(1), 1–48. DOI ↗
उपनामBayesian DCC-GARCH, Bayesian Dynamic Conditional Correlation, MCMC DCC-GARCH, Bayesian multivariate volatility modelVAR, VAR model, vector autoregressive model, multivariate autoregression
संबंधित65
सारांशBayesian DCC-GARCH estimates time-varying correlations across multiple financial or economic series by combining Engle's DCC-GARCH structure with Bayesian inference. Rather than maximising a likelihood, it places prior distributions over all parameters and uses Markov Chain Monte Carlo (MCMC) sampling to produce full posterior distributions, yielding richer uncertainty quantification than classical DCC-GARCH.Vector Autoregression is a multivariate time-series model in which each variable is regressed on its own lags and the lags of all other variables in the system. Originally proposed by Sims (1980) as a data-driven alternative to large structural macroeconomic models, VAR has become the standard workhorse for dynamic analysis in empirical economics and finance.
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  1. v1
  2. 2 स्रोत
  3. PUBLISHED
  1. v1
  2. 2 स्रोत
  3. PUBLISHED

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ScholarGateविधियों की तुलना करें: Bayesian DCC-GARCH · Vector Autoregression. 2026-06-17 को यहाँ से प्राप्त https://scholargate.app/hi/compare