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Asymptotic properties of a maximum likelihood estimator with data from a Gaussian process
Authors:Zhiliang Ying
Abstract:We consider an estimation problem with observations from a Gaussian process. The problem arises from a stochastic process modeling of computer experiments proposed recently by Sacks, Schiller, and Welch. By establishing various representations and approximations to the corresponding log-likelihood function, we show that the maximum likelihood estimator of the identifiable parameter θσ2 is strongly consistent and converges weakly (when normalized by √n) to a normal random variable, whose variance does not depend on the selection of sample points. Some extensions to regression models are also obtained.
Keywords:Ornstein-Uhlenbeck process  maximum likelihood estimator  computer experiments  consistency  asymptotic normality  regression model  least squares estimator
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