Stochastic Volatility Demand Systems
We address the estimation of stochastic volatility demand systems. In particular, we relax the homoscedasticity assumption and instead assume that the covariance matrix of the errors of demand systems is time-varying. Since most economic and fiÂ…nancial time series are nonlinear, we achieve superior modeling using parametric nonlinear demand systems in which the unconditional variance is constant but the conditional variance, like the conditional mean, is also a random variable depending on current and past information. We also prove an important practical result of invariance of the maximum likelihood estimator with respect to the choice of equation eliminated from a singular demand system. An empirical application is provided, using the BEKK specifiÂ…cation to model the conditional covariance matrix of the errors of the basic translog demand system.
Year of publication: |
2014-09-29
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Authors: | Serletis, Apostolos ; Isakin, Maksim |
Institutions: | Department of Economics, University of Calgary |
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