The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric framework has recently received attention. As emphasized by Hall, Racine & Li (2004), these conditional PDFs are extremely useful for a range of tasks including modelling and predicting\ud consumer choice. The aim of this paper is threefold. First, we implement nonparametric kernel estimation of PDF with a binary choice variable and both continuous and discrete explanatory variables. Second, we address the issue of the performances of this nonparametric estimator when compared to a classic on-the-shelf parametric estimator, namely a probit. We propose to evaluate these estimators in terms of their predictive performances, in the line of the\ud ...
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 ...
Summary Finite-sample properties of non-parametric regression for binary dependent variables are ana...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
Strong assumptions needed to correctly specify parametric binary choice probability models make them...
The following thesis compares the performance of several parametric and semiparametric estimators in...
We propose a nonparametric approach for estimating single-index, binary-choice models when parametri...
This paper uses information theoretic methods to introduce a new class of probability distributions...
This paper studies the problem of nonparametric identification and estimation of binary threshold-cro...
We describe the R np package via a series of applications that may be of interest to applied econome...
AbstractThe latent variable and generalized linear modelling approaches do not provide a systematic ...
In this paper we apply recently-developed nonparametric conditional kernel density estimation to mod...
Finite-sample properties of nonparametric regression for binary dependent variables are an-alyzed. N...
Sample selection models are employed when an outcome of interest is observed for a restricted non-ra...
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 ...
Summary Finite-sample properties of non-parametric regression for binary dependent variables are ana...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
Strong assumptions needed to correctly specify parametric binary choice probability models make them...
The following thesis compares the performance of several parametric and semiparametric estimators in...
We propose a nonparametric approach for estimating single-index, binary-choice models when parametri...
This paper uses information theoretic methods to introduce a new class of probability distributions...
This paper studies the problem of nonparametric identification and estimation of binary threshold-cro...
We describe the R np package via a series of applications that may be of interest to applied econome...
AbstractThe latent variable and generalized linear modelling approaches do not provide a systematic ...
In this paper we apply recently-developed nonparametric conditional kernel density estimation to mod...
Finite-sample properties of nonparametric regression for binary dependent variables are an-alyzed. N...
Sample selection models are employed when an outcome of interest is observed for a restricted non-ra...
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 ...
Summary Finite-sample properties of non-parametric regression for binary dependent variables are ana...