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Maximum Likelihood Estimation of Generalized Itô Processes with Discretely Sampled Data

Published online by Cambridge University Press:  18 October 2010

Andrew W. Lo*
Affiliation:
University of Pennsylvania

Abstract

This paper considers the parametric estimation problem for continuous-time stochastic processes described by first-order nonlinear stochastic differential equations of the generalized Itô type (containing both jump and diffusion components). We derive a particular functional partial differential equation which characterizes the exact likelihood function of a discretely sampled Itô process. In addition, we show by a simple counterexample that the common approach of estimating parameters of an Itô process by applying maximum likelihood to a discretization of the stochastic differential equation does not yield consistent estimators.

Type
Research Article
Copyright
Copyright © Cambridge University Press 1988 

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