A new approach for estimating the aggregate hierarchical logit model is presented. Though usually derived from random utility theory assuming correlated stochastic errors, the model can also be derived as a solution to a maximum entropy problem. Under the latter approach, the Lagrange multipliers of the optimization problem can be understood as parameter estimators of the model. Based on theoretical analysis and Monte Carlo simulations of a transportation demand model, it is demonstrated that the maximum entropy estimators have statistical properties that are superior to classical maximum likelihood estimators, particularly for small or medium-size samples. The simulations also generated reduced bias in the estimates of the subjective value...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
A novel class of estimators, called maximum entropy Leuven (MEL) estimators, is presented and its pe...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...
Maximum entropy models are often used to describe supply and demand behavior in urban transportation...
Maximum entropy estimation is a relatively new estimation technique in econometrics. We carry out se...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
An adaptive estimator is proposed to optimally estimate unknown truncation points of the error suppo...
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 density estimation task, Maximum Entropy (Maxent) model can effectively use reliable prior inform...
We propose a partially adaptive estimator based on information theoretic maxi-mum entropy estimates ...
Abstract: Consider the linear regression model y = X+ u in the usual notation. In many applications ...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
In this study we illustrate a Maximum Entropy (ME) methodology for modeling incomplete information a...
In this article, we describe the gmentropylogit command, which implements the generalized maximum en...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
A novel class of estimators, called maximum entropy Leuven (MEL) estimators, is presented and its pe...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...
Maximum entropy models are often used to describe supply and demand behavior in urban transportation...
Maximum entropy estimation is a relatively new estimation technique in econometrics. We carry out se...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
An adaptive estimator is proposed to optimally estimate unknown truncation points of the error suppo...
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 density estimation task, Maximum Entropy (Maxent) model can effectively use reliable prior inform...
We propose a partially adaptive estimator based on information theoretic maxi-mum entropy estimates ...
Abstract: Consider the linear regression model y = X+ u in the usual notation. In many applications ...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
In this study we illustrate a Maximum Entropy (ME) methodology for modeling incomplete information a...
In this article, we describe the gmentropylogit command, which implements the generalized maximum en...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
A novel class of estimators, called maximum entropy Leuven (MEL) estimators, is presented and its pe...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...