In this paper we propose a very flexible estimator in the context of truncated regression that does not require parametric assumptions. To do this, we adapt the theory of local maximum likelihood estimation. We provide the asymptotic results and illustrate the performance of our estimator on simulated and real data sets. Our estimator performs as well as the fully parametric estimator when the assumptions for the latter hold, but as expected, much better when they do not (provided that the curse of dimensionality problem is not the issue). Overall, our estimator exhibits a fair degree of robustness to various deviations from linearity in the regression equation and also to deviations from the specification of the error term. So the approach...
We consider partial likelihood analysis of a truncated Poisson regression model for time series of c...
The nonparametric censored regression model, with a fixed, known censoring point (normalized to zero...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
In this paper we propose a very flexible estimator in the context of truncated regression that does n...
This paper proposes new estimators of the latent regression function in nonparametric censored and t...
This article provides a semi parametric method for the estimation of truncated regression models wh...
Two existing density estimators based on local likelihood have properties that are comparable to t...
International audienceWe investigate the parametric maximum likelihood estimator for truncated data ...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
In survival analysis, the relationship between a survival time and a covariate is conveniently model...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
Truncated sample arise when one do not observe a certain segment of a population. This typically hap...
We consider estimation and inference of a subvector of parameters that are de\u85ned through local m...
We consider nonparametric identi\u85cation and estimation of truncated regression models with unknow...
Methods for probability density estimation are traditionally classified as either parametric or non-...
We consider partial likelihood analysis of a truncated Poisson regression model for time series of c...
The nonparametric censored regression model, with a fixed, known censoring point (normalized to zero...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
In this paper we propose a very flexible estimator in the context of truncated regression that does n...
This paper proposes new estimators of the latent regression function in nonparametric censored and t...
This article provides a semi parametric method for the estimation of truncated regression models wh...
Two existing density estimators based on local likelihood have properties that are comparable to t...
International audienceWe investigate the parametric maximum likelihood estimator for truncated data ...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
In survival analysis, the relationship between a survival time and a covariate is conveniently model...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
Truncated sample arise when one do not observe a certain segment of a population. This typically hap...
We consider estimation and inference of a subvector of parameters that are de\u85ned through local m...
We consider nonparametric identi\u85cation and estimation of truncated regression models with unknow...
Methods for probability density estimation are traditionally classified as either parametric or non-...
We consider partial likelihood analysis of a truncated Poisson regression model for time series of c...
The nonparametric censored regression model, with a fixed, known censoring point (normalized to zero...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...