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Cuadernos de Administración
Print version ISSN 0120-3592
Abstract
GRAJALES CORREA, Carlos Alexander and PEREZ RAMIREZ, Fredy Ocaris. A continuous model and a discrete model for estimating the stochastic volatility probability density of financial series yields. Cuad. Adm. [online]. 2008, vol.21, n.36, pp.113-132. ISSN 0120-3592.
This article considers the daily yield of a financial asset for the purpose of modeling and comparing its stochastic volatility probability density. To do so, ARCH models and their extensions in discrete time are proposed as well as the empirical stochastic volatility model developed by Paul Wilmott. For the discrete case, the models that enable estimating the conditional heterocedastic volatility in an instant t of time, are shown. For the continuous case, an Itô dissemination process is associated with the stochastic volatility of the financial series; that enables making said process discrete and simulating it, to obtain empirical volatility probability densities. Finally, the results are illustrated and compared to the methodologies discussed in the case of the financial series United Status S&P 500, the Mexican Stock Exchange Price and Quote Index (IPC is the Mexican acronym), and the Colombian Stock Exchange General Index (IGBC is the Colombian acronym).
Keywords : probability density function; ARCH; volatility; heterocedasticity; Itô dissemination processes; simulation.