Maximum Likelihood Estimation of Latent Affine Processes

38 Pages Posted: 11 May 2003 Last revised: 8 Dec 2022

See all articles by David S. Bates

David S. Bates

University of Iowa - Department of Finance; National Bureau of Economic Research (NBER)

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Date Written: May 2003

Abstract

This article develops a direct filtration-based maximum likelihood methodology for estimating the parameters and realizations of latent affine processes. The equivalent of Bayes' rule is derived for recursively updating the joint characteristic function of latent variables and the data conditional upon past data. Likelihood functions can consequently be evaluated directly by Fourier inversion. An application to daily stock returns over 1953-96 reveals substantial divergences from EMM-based estimates: in particular, more substantial and time-varying jump risk.

Suggested Citation

Bates, David S., Maximum Likelihood Estimation of Latent Affine Processes (May 2003). NBER Working Paper No. w9673, Available at SSRN: https://ssrn.com/abstract=406045

David S. Bates (Contact Author)

University of Iowa - Department of Finance ( email )

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