The method of Generalized Maximum Entropy (GME), proposed in Golan, Judge and Miller (1996), is an information-theoretic approach that is robust to multicolinearity problem. It uses an objective function that is the sum of the entropies for coefficient distributions and disturbance distributions. This method can be generalized to the weighted GME (W-GME), where different weights are assigned to the two entropies in the objective function. We propose a data-driven method to select the weights in the entropy objective function. We use the least squares cross validation to derive the optimal weights. MonteCarlo simulations demonstrate that the proposedW-GME estimator is comparable to and often outperforms the conventional GME estimator, which ...
A novel class of estimators, called maximum entropy Leuven (MEL) estimators, is presented and its pe...
Abstract. The weighted likelihood can be used to make inference about one pop-ulation when data from...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
In this article, we describe the gmentropylogit command, which implements the generalized maximum en...
This paper introduces the general multilevel models and discusses the generalized maximum entropy (G...
Abstract: Consider the linear regression model y = X+ u in the usual notation. In many applications ...
Multicollinearity hampers empirical econometrics. The remedies proposed to date suffer from pitfalls...
Multicollinearity hampers empirical econometrics. The remedies proposed to date suffer from pitfall...
In this study we illustrate a Maximum Entropy (ME) methodology for modeling incomplete information a...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
Information-based estimation techniques are becoming more popular in the \ufb01eld of Ecological Inf...
Methodologies related to information theory have been increasingly used in studies in economics and ...
The origin of entropy dates back to 19th century. In 1948, the entropy concept as a measure of uncer...
We develop a GMM estimator for the distribution of a variable where summary statistics are available...
A novel class of estimators, called maximum entropy Leuven (MEL) estimators, is presented and its pe...
Abstract. The weighted likelihood can be used to make inference about one pop-ulation when data from...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
In this article, we describe the gmentropylogit command, which implements the generalized maximum en...
This paper introduces the general multilevel models and discusses the generalized maximum entropy (G...
Abstract: Consider the linear regression model y = X+ u in the usual notation. In many applications ...
Multicollinearity hampers empirical econometrics. The remedies proposed to date suffer from pitfalls...
Multicollinearity hampers empirical econometrics. The remedies proposed to date suffer from pitfall...
In this study we illustrate a Maximum Entropy (ME) methodology for modeling incomplete information a...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
Information-based estimation techniques are becoming more popular in the \ufb01eld of Ecological Inf...
Methodologies related to information theory have been increasingly used in studies in economics and ...
The origin of entropy dates back to 19th century. In 1948, the entropy concept as a measure of uncer...
We develop a GMM estimator for the distribution of a variable where summary statistics are available...
A novel class of estimators, called maximum entropy Leuven (MEL) estimators, is presented and its pe...
Abstract. The weighted likelihood can be used to make inference about one pop-ulation when data from...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...