The Cressie-Read (CR) family of power divergence measures is used to identify a new class of statistical models and estimators for competing explanations of the data in binary choice models. A large flexible class of cumulative distribution functions and associated probability density functions emerge that subsumes the conventional logit model, and forms the basis for a large set of estimation alternatives to traditional logit and probit methods. Asymptotic properties of estimators are identified, and sampling experiments are used to provide a basis for gauging the finite sample performance of the estimators in this new class of statistical models
markdownabstract__Abstract__ The multivariate choice problem with correlated binary choices is in...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
The power divergence (PD) and the density power divergence (DPD) families have proven to be useful t...
The Cressie-Read (CR) family of power divergence measures is used to identify a new class of statist...
This paper uses information theoretic methods to introduce a new class of probability distributions ...
This paper introduces a new class of estimators based on minimization of the Cressie-Read (CR) power...
This paper introduces a new class of estimators based on minimization of the Cressie-Read (CR)power ...
To address the unknown nature of probability-sampling models, in this paper we use information theor...
We discuss the relative advantages and disadvantages of four types of convenient estimators of binar...
This paper studies the problem of nonparametric identification and estimation of binary threshold-cro...
summary:Point estimators based on minimization of information-theoretic divergences between empirica...
In this paper we discuss the estimation of binary choice models with individual effects, when the da...
A measure of probability changes in probit and logit dichotomous models is proposed based of the eff...
The following thesis compares the performance of several parametric and semiparametric estimators in...
This paper provides a few variants of a simple estimator for binary choice models with endogenous or...
markdownabstract__Abstract__ The multivariate choice problem with correlated binary choices is in...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
The power divergence (PD) and the density power divergence (DPD) families have proven to be useful t...
The Cressie-Read (CR) family of power divergence measures is used to identify a new class of statist...
This paper uses information theoretic methods to introduce a new class of probability distributions ...
This paper introduces a new class of estimators based on minimization of the Cressie-Read (CR) power...
This paper introduces a new class of estimators based on minimization of the Cressie-Read (CR)power ...
To address the unknown nature of probability-sampling models, in this paper we use information theor...
We discuss the relative advantages and disadvantages of four types of convenient estimators of binar...
This paper studies the problem of nonparametric identification and estimation of binary threshold-cro...
summary:Point estimators based on minimization of information-theoretic divergences between empirica...
In this paper we discuss the estimation of binary choice models with individual effects, when the da...
A measure of probability changes in probit and logit dichotomous models is proposed based of the eff...
The following thesis compares the performance of several parametric and semiparametric estimators in...
This paper provides a few variants of a simple estimator for binary choice models with endogenous or...
markdownabstract__Abstract__ The multivariate choice problem with correlated binary choices is in...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
The power divergence (PD) and the density power divergence (DPD) families have proven to be useful t...