AbstractSuppose on a probability space (Ω, F, P), a partially observable random process (xt, yt), t ≥ 0; is given where only the second component (yt) is observed. Furthermore assume that (xt, yt) satisfy the following system of stochastic differential equations driven by independent Wiener processes (W1(t)) and (W2(t)): dxt=−βxtdt+dW1(t), x0=0, dyt=αxtdt+dW2(t), y0=0; α, β∞(a,b), a>0. We prove the local asymptotic normality of the model and obtain a large deviation inequality for the maximum likelihood estimator (m.l.e.) of the parameter θ = (α, β). This also implies the strong consistency, efficiency, asymptotic normality and the convergence of moments for the m.l.e. The method of proof can be easily extended to obtain similar results whe...
AbstractBerry-Esseen bounds, with random and nonrandom normings, and large deviation probability bou...
AbstractAsymptotically maximum likelihood estimators and estimators asymptotically minimizing criter...
This paper first strictly proved that the growth of the second moment of a large class of Gaussian p...
Suppose on a probability space ([Omega], F, P), a partially observable random process (xt, yt), t >=...
AbstractSuppose on a probability space (Ω, F, P), a partially observable random process (xt, yt), t ...
AbstractWe give the asymptotic statistical theory (strong consistency and asymptotic normality) of a...
We give the asymptotic statistical theory (strong consistency and asymptotic normality) of a modifie...
This paper considers a partially linear model of the form y = x beta + g(t) + e, where beta is an un...
AbstractLet Xn1,…, Xnn be counting processes and let Yn1,…, Ynn be vector-valued covariate processes...
AbstractWe prove Girsanov-type theorems for Hilbert space-valued stochastic differential equations a...
AbstractLeast squares estimation of the parameters of a single input-single output linear autonomous...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
Caption title.Includes bibliographical references (p. 23-25).Supported by the U.S. Air Force Office ...
We consider a family of processes (X[var epsilon], Y[var epsilon]) where X[var epsilon] = (X[var eps...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
AbstractBerry-Esseen bounds, with random and nonrandom normings, and large deviation probability bou...
AbstractAsymptotically maximum likelihood estimators and estimators asymptotically minimizing criter...
This paper first strictly proved that the growth of the second moment of a large class of Gaussian p...
Suppose on a probability space ([Omega], F, P), a partially observable random process (xt, yt), t >=...
AbstractSuppose on a probability space (Ω, F, P), a partially observable random process (xt, yt), t ...
AbstractWe give the asymptotic statistical theory (strong consistency and asymptotic normality) of a...
We give the asymptotic statistical theory (strong consistency and asymptotic normality) of a modifie...
This paper considers a partially linear model of the form y = x beta + g(t) + e, where beta is an un...
AbstractLet Xn1,…, Xnn be counting processes and let Yn1,…, Ynn be vector-valued covariate processes...
AbstractWe prove Girsanov-type theorems for Hilbert space-valued stochastic differential equations a...
AbstractLeast squares estimation of the parameters of a single input-single output linear autonomous...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
Caption title.Includes bibliographical references (p. 23-25).Supported by the U.S. Air Force Office ...
We consider a family of processes (X[var epsilon], Y[var epsilon]) where X[var epsilon] = (X[var eps...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
AbstractBerry-Esseen bounds, with random and nonrandom normings, and large deviation probability bou...
AbstractAsymptotically maximum likelihood estimators and estimators asymptotically minimizing criter...
This paper first strictly proved that the growth of the second moment of a large class of Gaussian p...