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arxiv: 1111.2205 · v1 · pith:M4EBMPERnew · submitted 2011-11-09 · 🧮 math.ST · stat.TH

Parameter estimation in linear regression driven by a Gaussian sheet

classification 🧮 math.ST stat.TH
keywords drivinggaussianlinearparametersrandomregressionsheetcases
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The problem of estimating the parameters of a linear regression model $Z(s,t)=m_1g_1(s,t)+ \cdots + m_pg_p(s,t)+U(s,t)$ based on observations of $Z$ on a spatial domain $G$ of special shape is considered, where the driving process $U$ is a Gaussian random field and $g_1, \ldots, g_p$ are known functions. Explicit forms of the maximum likelihood estimators of the parameters are derived in the cases when $U$ is either a Wiener or a stationary or nonstationary Ornstein-Uhlenbeck sheet. Simulation results are also presented, where the driving random sheets are simulated with the help of their Karhunen-Lo\`eve expansions.

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