Closed-Form Likelihood Expansions for Multivariate Diffusions
37 Pages Posted: 24 May 2002 Last revised: 23 Dec 2022
Date Written: May 2002
Abstract
This paper provides closed-form expansions for the transition density and likelihood function of arbitrary multivariate diffusions. The expansions are based on a Hermite series, whose coefficients are calculated explicitly by exploiting the special structure afforded by the diffusion hypothesis. Because the transition function for most diffusion models is not known explicitly, the expansions of this paper can help make maximum-likelihood a practical estimation method for discretely sampled multivariate diffusions. Examples of interest in financial econometrics are included.
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