Many statistical models over a discrete sample space often face the computational difficulty of the normalization constant. Because of that, the maximum likelihood estimator does not work. In order to circumvent the computation difficulty, alternative estimators such as pseudo-likelihood and composite likelihood that require only a local computation over the sample space have been proposed. In this paper, we present a theoretical analysis of such localized estimators. The asymptotic variance of localized estimators depends on the neighborhood system on the sample space. We investigate the relation between the neighborhood system and estimation accuracy of localized estimators. Moreover, we derive the efficiency bound. The theoretical result...
In this paper, we address the problem of testing hypotheses using maximum likelihood statistics in ...
In this paper we generalize Besag's pseudo-likelihood function for spatial statistical models on a r...
The local maximum likelihood estimate (t) of a parameter in a statistical model f(x, theta) is defin...
Many statistical models over a discrete sample space often face the computational difficulty of the ...
The local likelihood estimator and a semiparametric bootstrap method are studied under weaker condit...
In some estimation problems, especially in applications dealing with information theory, signal proc...
This paper is concerned with robust estimation under moment restrictions. A moment restriction model...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
Abstract—Surprisingly many signal processing problems can be approached by locally fitting autonomou...
Methods for probability density estimation are traditionally classified as either parametric or non-...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
Under regularity conditions the maximum likelihood estimator of the location parameter in a location...
In many applications the observed data can be viewed as a censored high dimensional full data random...
In this paper we consider estimation of models popular in efficiency and productivity analysis (such...
This thesis has two distinct parts. The second and third chapters concern the theory and practical ...
In this paper, we address the problem of testing hypotheses using maximum likelihood statistics in ...
In this paper we generalize Besag's pseudo-likelihood function for spatial statistical models on a r...
The local maximum likelihood estimate (t) of a parameter in a statistical model f(x, theta) is defin...
Many statistical models over a discrete sample space often face the computational difficulty of the ...
The local likelihood estimator and a semiparametric bootstrap method are studied under weaker condit...
In some estimation problems, especially in applications dealing with information theory, signal proc...
This paper is concerned with robust estimation under moment restrictions. A moment restriction model...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
Abstract—Surprisingly many signal processing problems can be approached by locally fitting autonomou...
Methods for probability density estimation are traditionally classified as either parametric or non-...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
Under regularity conditions the maximum likelihood estimator of the location parameter in a location...
In many applications the observed data can be viewed as a censored high dimensional full data random...
In this paper we consider estimation of models popular in efficiency and productivity analysis (such...
This thesis has two distinct parts. The second and third chapters concern the theory and practical ...
In this paper, we address the problem of testing hypotheses using maximum likelihood statistics in ...
In this paper we generalize Besag's pseudo-likelihood function for spatial statistical models on a r...
The local maximum likelihood estimate (t) of a parameter in a statistical model f(x, theta) is defin...