An adaptive estimator is proposed to optimally estimate unknown truncation points of the error support space for the general linear model. The adaptive estimator is specified analytically to minimize a risk function based on the squared error loss measure. It is then empirically applied to a generalized maximum entropy estimator of the linear model using bootstrapping, allowing the information set of the model itself to determine the truncation points. Monte Carlo simulations are used to demonstrate performance of the adaptive entropy estimator relative to maximum entropy estimation coupled with alternative truncation rules and to ordinary least squares estimation. A food demand application is included to demonstrate practical implementa...
In density estimation task, Maximum Entropy (Maxent) model can effectively use reliable prior inform...
The error-entropy-minimization approach in adaptive system training is addressed in this paper. The ...
The generalized maximum entropy (GME) estimator was introduced by Golan et al. as a way to overcome ...
An adaptive estimator is proposed to optimally estimate unknown truncation points of the error suppo...
We propose a partially adaptive estimator based on information theoretic maxi-mum entropy estimates ...
Adaptive estimation is frequently used when the error distribu-tion is non-normal. We propose a part...
The partially adaptive estimation based on the assumed error distribution has emerged as a popular a...
Abstract. We consider semiparametric regression problems for which the response function is known up...
A new approach for estimating the aggregate hierarchical logit model is presented. Though usually de...
Abstract: Consider the linear regression model y = X+ u in the usual notation. In many applications ...
In this paper we illustrate the use of alternative truncated regression estimators for the general l...
Maximum entropy estimation is a relatively new estimation technique in econometrics. We carry out se...
This paper is a continuation of the work initiated in [1, 2]: we estimate parameters in a regression...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
The problem of parameter estimation is considered by using the entropy of the error as the criterion...
In density estimation task, Maximum Entropy (Maxent) model can effectively use reliable prior inform...
The error-entropy-minimization approach in adaptive system training is addressed in this paper. The ...
The generalized maximum entropy (GME) estimator was introduced by Golan et al. as a way to overcome ...
An adaptive estimator is proposed to optimally estimate unknown truncation points of the error suppo...
We propose a partially adaptive estimator based on information theoretic maxi-mum entropy estimates ...
Adaptive estimation is frequently used when the error distribu-tion is non-normal. We propose a part...
The partially adaptive estimation based on the assumed error distribution has emerged as a popular a...
Abstract. We consider semiparametric regression problems for which the response function is known up...
A new approach for estimating the aggregate hierarchical logit model is presented. Though usually de...
Abstract: Consider the linear regression model y = X+ u in the usual notation. In many applications ...
In this paper we illustrate the use of alternative truncated regression estimators for the general l...
Maximum entropy estimation is a relatively new estimation technique in econometrics. We carry out se...
This paper is a continuation of the work initiated in [1, 2]: we estimate parameters in a regression...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
The problem of parameter estimation is considered by using the entropy of the error as the criterion...
In density estimation task, Maximum Entropy (Maxent) model can effectively use reliable prior inform...
The error-entropy-minimization approach in adaptive system training is addressed in this paper. The ...
The generalized maximum entropy (GME) estimator was introduced by Golan et al. as a way to overcome ...